Welcome to ding0’s documentation!¶
DIstribution Network GeneratOr – A tool to generate synthetic medium and low voltage power distribution grids based on open (or at least accessible) data.
What is ding0 about?¶
DIstribution Network GeneratOr (Ding0) is a tool to generate synthetic medium and low voltage power distribution grids based on open (or at least accessible) data. This software project is part of the research project open_eGo.
The theoretical background is detailed in section Theoretical background. Install the software package as explained Installation on Linux. Take up on the How to use ding0? to understand how to use the software.
A standardized presentation of ding0 can be found in the factsheet on the OEP.
Getting started¶
Installation on Linux¶
Note
Installation is only tested on (Debian-like) Linux OS.
Ding0 is provided through PyPi package management and, thus, installable from sources of pip3. You may need to additionally install some specific system packages for a successful installation of Ding0 and its dependencies.
The script ding0_system_dependencies.sh installs required system package dependencies.
cd <your-ding0-install-path>
chmod +x ding0_system_dependencies.sh
sudo ./ding0_system_dependencies.sh
We recommend installing Ding0 (and in general third-party) python packages in a virtual environment, encapsulated from the system python distribution. This is optional. If you want to follow our suggestion, install the tool virtualenv by
sudo apt-get install virtualenv # since Ubuntu 16.04
Afterwards virtualenv allows you to create multiple parallel python distributions. Since Ding0 relies on Python 3, we specify this in the virtualenv creation. Create a new one for Ding0 by
# Adjust path to your specific needs
virtualenv -p python3.8 ~/virtualenvs/ding0
Jump into (aka. activate) this python distribution by
# Adjust path to your specific needs
source ~/virtualenvs/ding0/bin/activate
From that, the latest release of ding0 is installed by
pip install ding0
Pip allows to install a developer version of a package that uses currently checked out code. A developer mode installation is achieved by cloning the repository to an arbitrary path (e.g. ~/repos/ in the following example) and installing manually via pip:
mkdir ~/repos/
cd ~/repos/
git clone https://github.com/openego/ding0.git # for SSH use: git clone git@github.com:openego/ding0.git
pip install -e ~/repos/ding0/
Installation on Windows¶
To install Ding0 in windows, it is currently recommended to use Anaconda or Miniconda and create an environment with the ding0_env.yml file provided.
Note
Normally both miniconda and Anaconda are packaged with the Anaconda Prompt to be used in Windows. Within typical installations, this restricts the use of the conda command to only within this prompt. Depending on your convenience, it may be a wise choice to add the conda command to your path during the installation by checking the appropriate checkbox. This would allow conda to be used from anywhere in the operating system except for PowerShell
Note
Conda and Powershell don’t seem to be working well together at the moment. There seems to be an issue with Powershell spawning a new command prompt for the execution of every command. This makes the environment activate in a different prompt from the one you may be working with after activation. This may eventually get fixed later on but for now, we would recommend using only the standard cmd.exe on windows.
If you’re using Git Bash on Windows, you might have to add conda to paths to have the conda command available (adjust path to your Conda installation):
. /c/ProgramData/Anaconda3/etc/profile.d/conda.sh
To create a ding0 environment using the yaml file in conda, use the command:
conda env create -f ding0_env.yml
By default this environment will be called ding0_env. If you would like to use a custom name for your environment use the following variant of the command:
conda env create -n custom_env_name -f ding0_env.yml
An to activate this environment, from any folder in the operating system, use the command:
conda activate ding0_env
Once the environment is activated, you have two options to install ding0. Either install it from the local repository with the command:
pip install -e \path\to\ding0\
Or install it from the pypi repository with the command:
pip install ding0
Use Ding0¶
Have a look at the How to use ding0?.
How to use ding0?¶
Examples¶
We provide two examples of how to use Ding0 along with two example for analysis
of resulting data. The
first example
shows how Ding0
is applied to a single medium-voltage grid district. Grid topology for the
medium- and low-voltage grid level is generated and saved to a file (.pkl).
The analysis script
takes data generated in the first example and produces exemplary key
figures and plots.
The second example
shows
how to generate a larger number of grid topology data
sets.
As the current data source sometimes produces unuseful data or leads to program
execution interruptions, grids that cannot be created are excluded from grid topology
generation. This
is enable by setting failsafe=
to True.
The according analysis script
provides exemplary plots for data of multiple grid
districts.
High-level functions¶
For larger calculation (parallelization)¶
To generate data for a larger area consider to parallelize execution of Ding0
as done in the parallelization example
.
Analysis of grid data¶
Plot results¶
The plot_mv_topology()
allows plots of the MV grid including grid topology
with line loadings and node voltages. You can simply fire it using an MVGrid instance or pass argument
export_figures=True
to run_ding0()
to export some key plots.
The plotting allows to draw a background map. For this function, the package contextily is needed which
is not included in the standard ding0 installation. If you want to use this feature, you can simply install it by
pip3 install contextily
See plotting function for a detailed description of possible modes and parameters.
Example plot:

Export key figures¶
We provide a set of functions to export key figures of the generated data. The following assumes a Ding0 network is generated as follows:
from egoio.tools import db
from ding0.core import NetworkDing0
engine = db.connection(readonly=True)
session = sessionmaker(bind=engine)()
network = NetworkDing0(name='network')
network.run_ding0(
session=session,
mv_grid_districts_no=[3040])
Extract key information about medium and low voltage grid topology.
from ding0.tools.results import calculate_mvgd_stats
# statistical key figures of medium voltage grid
mv_stats = calculate_mvgd_stats(network)
# statistical key figures of medium voltage grid
lv_stats = calculate_lvgd_stats(network)
Information about power flows and voltage levels from final approving power flow
analysis can be obtained from
calculate_mvgd_voltage_current_stats()
and
calculate_lvgd_voltage_current_stats()
.
If a large number of grid districts is involved consider to parallelize the execution by
mv_stats,
lvgd_stat
mv_nodes,
mv_edges,
lv_nodes,
lv_edges = parallel_running_stats(
districts_list = mv_grid_districts,
n_of_processes = n_of_processes,
n_of_districts = n_of_districts,
source = 'pkl',
mode = '')
Data is read from file and returned in six tables.
Furthermore, the function to_dataframe()
allows to get
tabular information about nodes and edges of the grid topology representing
graph.
nodes, edges = network.to_dataframe()
Compare data versions¶
Data generated by different versions of Ding0 or different input data can be
easily compared. Load datasets designated for comparison and pass to
dataframe_equal()
.
network_a = load_nd_from_pickle(filename='filename_a.pkl')
network_b = load_nd_from_pickle(filename='filename_b.pkl')
passed, msg = dataframe_equal(network_a, network_b)
Explanation of key figures¶
Parameter | Description | Unit |
---|---|---|
km_cable | Cumulative length of underground cables | km |
CSV file export¶
Ding0 objects are exported in csv files.
Lines¶
Field | type | Description | Unit |
---|---|---|---|
edge_name | str | unambiguous name of edge | n/a |
grid_id_db | int | unambiguous id_db of corresponding grid (MVgrid-id if MV-edge, LVgrid-id if LV-edge | n/a |
type_kind | str | n/a | |
type_name | str | n/a | |
node1 | str | id_db of first node | n/a |
node2 | str | id_db of second node | n/a |
length | float | length of line | km |
U_n | float | nominal voltage | kV |
R | float | Ohm/km | |
C | float | uF/km | |
L | float | mH/km | |
I_max_th | float | A | |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
LV-Branchtees¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘LVCableDistributorDing0_LV_#lvgridid#_#ascendingnumber#’ | n/a |
LV_grid_id_db | int | unambiguous id_db of LV-Grid | n/a |
geom | None | geometric coordinates | n/a |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
LV-Generators¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘LVGeneratorDing0_LV_#lvgridid#_#ascendingnumber#’ | n/a |
LV_grid_id_db | int | unambiguous id_db of LV-Grid | n/a |
geom | wkt | geometric coordinates | WGS84 POINT |
type | str | type of generation | {solar; biomass} |
subtype | str | subtype of generation: {solar_roof_mounted, unknown; biomass} | n/a |
v_level | int | voltage level of generator | |
nominal_capacity | float | nominal capacity | |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
LV-Grids¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘LVGridDing0_LV_#lvgridid#_#lvgridid#’ | n/a |
LV_grid_id | int | unambiguous number of LV-Grid | n/a |
geom | wkt | geometric coordinates | WGS84 MULTIPOLYGON |
population | int | population in LV-Grid | ? |
voltage_nom | float | voltage level of grid | kV |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
LV-Loads¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘LVLoadDing0_LV_#lvgridid#_#ascendingnumber#’ | n/a |
LV_grid_id_db | int | unambiguous id_db of LV-Grid | n/a |
geom | None | geometric coordinates | n/a |
consumption | {‘’str’’: float} | type of load {residential, agricultural, industrial} and corresponding consumption | n/a |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
LV-Stations¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘LVStationDing0_MV_#mvgridid#_#lvgridid#’ | n/a |
LV_grid_id_db | int | unambiguous id_db of LV-Grid | n/a |
geom | wkt | geometric coordinates | WGS84 POINT |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
LV-Transformers¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘TransformerDing0_LV_#mvgridid#_#lvgridid#’ | n/a |
LV_grid_id_db | int | unambiguous id_db of LV-Grid | n/a |
geom | wkt | geometric coordinates | WGS84 POINT |
voltage_op | float | kV | |
S_nom | float | nominal apparent power | kVA |
X | float | Ohm | |
R | float | Ohm | |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
LV-Grids¶
Field | type | Description | Unit |
---|---|---|---|
LV_grid_id | int | unambiguous number of LV-Grid | n/a |
MV_grid_id | int | unambiguous number of MV-Grid | n/a |
LV_grid_id_db | int | unambiguous id_db of LV-Grid | n/a |
MV_grid_id_db | int | unambiguous id_db of MV-Grid | n/a |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
MV-Branchtees¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘MVCableDistributorDing0_MV_#mvgridid#_#ascendingnumber#’ | n/a |
MV_grid_id_db | int | unambiguous id_db of MV-Grid | n/a |
geom | wkt | geometric coordinates | WGS84 POINT |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
MV-Generators¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘MVGeneratorDing0_MV_#mvgridid#_#ascendingnumber#’ | n/a |
MV_grid_id_db | int | unambiguous id_db of MV-Grid | n/a |
geom | wkt | geometric coordinates | WGS84 POINT |
type | str | type of generation: {solar; biomass} | n/a |
subtype | str | subtype of generation: {solar_ground_mounted, solar_roof_mounted, unknown; biomass, biogas} | n/a |
v_level | int | voltage level of generator | |
nominal_capacity | float | nominal capacity | |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
MV-Grids¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘MVGridDing0_MV_#mvgridid#_#mvgridid#’ | n/a |
MV_grid_id | int | unambiguous number of LV-Grid | n/a |
geom | wkt | geometric coordinates | WGS84 MULTIPOLYGON |
population | int | population in LV-Grid | ? |
voltage_nom | float | voltage level of grid | kV |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
MV-Loads¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘MVLoadDing0_MV_#mvgridid#_#ascendingnumber#’ | n/a |
MV_grid_id_db | int | unambiguous id_db of MV-Grid | n/a |
geom | wkt | geometric coordinates | WGS84 POLYGON |
consumption | {‘’str’’: float} | type of load {retail, residential, agricultural, industrial} and corresponding consumption | n/a |
is_aggregated | boolean | True if load is aggregated load, else False | n/a |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
MV-Stations¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘MVStationDing0_MV_#mvgridid#_#mvgridid#’ | n/a |
MV_grid_id_db | int | unambiguous id_db of MV-Grid | n/a |
geom | wkt | geometric coordinates | WGS84 POINT |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
MV-Transformers¶
Field | type | Description | Unit |
---|---|---|---|
id_db | str | unambiguous name: ‘TransformerDing0_MV_#mvgridid#_#mvgridid#’ | n/a |
MV_grid_id_db | int | unambiguous id_db of LV-Grid | n/a |
geom | wkt | geometric coordinates | WGS84 POINT |
voltage_op | float | kV | |
S_nom | float | nominal apparent power | kVA |
X | float | Ohm | |
R | float | Ohm | |
run_id | int | time and date of table generation | yyyyMMddhhmmss |
Theoretical background¶
Data basis¶
The fundamental data basis is decribed in [Huelk2017] and its extension is detailed by [Amme2017]. Further extensions and additional details are provided in the sections below.
Definition of names introduces terms we stick to in the following text.

Definition of names
MV/LV Substations and LV grid district¶
Medium-voltage/low-voltage (MV/LV) substations are located on a equidistant grid of points with an interval of 180m within the load areas. Cable length in low-voltage (LV) grids ranges from 100-1.500m (see [Kerber], [Scheffler], [Mohrmann]). According to [Scheffler], a cable length of 200 m to 300 m is most typical. Furthermore, we foud a difference between the cable length and the line over ground is 72% (1.39 Umwegfaktor), see master thesis Jonas Gütter. This seems plausible compared to the value for the MV grid of 77% (1.3). The chosen value concludes in cable lengths of 250m at the shortest distance and 283m at the longest distance between the middle point of the square and its outer line.
- Finding LV-Grid districts (LV-GD): We define Voronoi polygons within the load areas based on a grid of points with an interval of 180m.
- Assign consumption to the LV-GD: This works analogously to the methods for the MV-GD, as described in “Allocation of annual electricity consumption and power generation capacities across multi voltage levels in a high spatial resolution” (Huelk)
- Assign peak load
Medium-voltage grids¶
Methodological details and exemplary results are presented in [Amme2017].
Low-voltage grids¶
The topology of low-voltage grids is determined on the basis of typified grid models that are vastly available for the residential sector and partially available for other sector retail, industrial and agricultural. The mentioned sectors are modeled differently: the grid topology of residential sector loads founds on typified grid models from [Kerber]. Retail and industrial sector are treated as a single sector and use same methodology to determine grid topology as applied for the agricultural sector. Loads of each sector are located in separate branches - one for each sector. In the following its creation is described in detail.
However, a method to generate a representative variation of LV-grids, that can be assigned to the modeled LV/MV substations cannot be found. Given data on MV/LV substations:
- land use data divided in industry, commercial, agriculture and residential
- population
- peak load
- Define transformer
Branches of sector residential¶
LV-Branches
We are using the LV-Branches of Kerber from the grids. They should be assigned to the most plausible types of settlement areas.
Define the type of settlement area
To decide if a LV-grid district is most likely a rural, village or suburban settlement area we are using the population value combined with statistical data. Statisticly, there are 2.3 persons per appartment and 1.5 appartments per house. [see BBR Tabelle B12 http://www.ggr-planung.de/fileadmin/pdf-projekte/SiedEntw_und_InfrastrFolgekosten_Teil_2.pdf] [DEMIREL page 37-41, average has been coosen]. (This is not valid for urban areas.) With this we estimate the amount aus house connections (HC).
This value can also be found at the explenation of the database of the “Kerber”-grids and is assinged to the type of settlement area:
- Rural: 622 HC at 43 MV/LV substations results in an average amount of 14.5 HC/substation
- Village: 2807 HC at 51 MV/LV substations results in an average amount of 55 HC/substation
- Suburban: 4856 HC at 38 MV/LV substations results in an average amount of 128 HC/substationTher
With the resulting trendline of this three point, [the Polynomial degree 2 [ 16.127*(x^2)-7.847*x+6.1848 ] whereas x is the type of of settlement area], we difine the border values for the typ of settlement area at:
- Rural <31 HC/substation
- Village <87 HC/substation
- Suburban >=87 HC/substation
Assinging grid branches to the Substations
within the “Kerber”-model-grids several grid branches are found.
- Rural: 5 branches (with l>=78m & l<=676m)
- Village: 7 branches (with l>=102m & l<=588m)
- Suburban: 15 branches (with l>=85 & l<=610m)
Strangzuweisung Zu jeder ONS werden in Abhängigkeit von Netztyp und HA, NS-Stränge zugewiesen Eine Verteilung des Aufkommens der Stränge anhand von der Gesamtstranglänge geschieht mit Hilfe der Scheffler Angaben (Abbildung Länge der Netzstrahlen für ausgewählte Siedlungstypen [44])
- Categorising grid branches form “Kerber” model grids
Hinzu kommen auf Basis von kerber interpolierte stränge um Lücken in der Vollständigkeit zu schließen
Branches of sector retail/industrial and agricultural¶
Creating individual LV grid branches for the sectors retail/industrial and agricultural applies the same methodology. The topology of these grid branches determines by the sectoral peak load that is available at high spatial resolution (see [Huelk2017]). Furthermore the number of land-use areas (taken from [OSM]) of each of the sectors determines the number individual loads connected to one or more of these sectoral branches.
The topology of each sectoral branch is affected largely by assumptions on parameters that are provided in the table below.
Parameter | Value |
---|---|
Max. load in each branch | 290 kVA |
Max. branch length retail/industrial ![]() |
400 m |
Max. branch length agricultural ![]() |
800 m |
Length of branch stub | 30 m |
PV peak power <= 30 kW | residential |
PV peak power > 30 kW <= 100 kW | retail/industrial or agricultural |
PV peak power > 100 kW | MV/LV station bus bar |
In each LV grid district (LVGD) (see MV/LV Substations and LV grid district) sectoral peak load of sectors retail+industrial and agricultural are analyzed. The number loads of each sectors determines by dividing sectoral peak load by number of land-use area found in this grid district.
In the next step individual loads are allocated to branches considering the limit of max. 290 kVA peak load connected to a single branch. If a single load exceeds the limit of 290 kVA, it is halved until it is smaller than or equal to 290 kVA. Loads are distributed equidistant on the branches while the branch does not necessarily take the maximum length defined in the table above. The distance defines as
Single loads are connected to the branch line by stubs of a length of 30 m.
Photovoltaic (PV) power plants are allocated to different sectoral LV grid branches depending on the nominal power. The allocation by the nominal power is provided in the above table. It follows a simple assumption: smaller PV power plants are allocated to LV grid branches of sector residential, larger power plants are allocated to branches of the other sector, and really large ones are directly connected to the bus bar of the MV-LV substation.
Grid stability and equipment¶
During build of LV grid topology equipment is chosen with respect to max. occurring load and generation according to current grid codes (see [VDEAR]). Nevertheless, some overloading issues may remain. In addition, voltage issues may arise that can’t be considered during grid topology creation. Therefore, we adhere to the regulatory framework of [DINEN50160] which is simplified by [VDEAR]. According to [DINEN50160] voltage deviation is limited to +/-10 % of nominal that is for practical use divided into voltage drop/increase for each voltage level and the associated transformers. The allowed voltage increase in the LV grid level is limited to 3 % of nominal voltage. The allowed voltage drop is limited to 5 % as detailed in [Zdrallek].
Following steps do apply during reinforcement of Ding0 LV grids
- Checks for overloading issues at branches and MV-LV transformers first
- Critical branches (those with line overloading) are extended to appropriate size of cable to transport connected load and generation. Note, if connected load or generation capacity is still exceeding capacity of largest cable type. We keep largest available cable type and the issue most probably will remain
- Stations are tested for overloading issues for generation and load case as
well. If nominal apparent power of transformers of a substation is not
sufficient a two-step procedure is applied
- Existing transformers are extended (replaced) to comply with load and generation conencted to subsequent grid.
- If Step 1 does not resolve all issues additional transformers are build in the substation
- Subsequently over-voltage issues are analyzed for all grid nodes
- For each node where voltage exceeds 3 % of nominal voltage in feed-in case or 5 % of nominal voltage in load case, branch segments connecting the node with the substation are reinforce until no further issues remain. If a over-voltage issue cannot be solved by installing largest availabe cable (NAYY 4x1x300) this type of cable still remains as well as the overvoltage issue
- Substations are checked for over-voltage issues at the bus bar individually. Identified issues are resolved by extending nominal apparent power of existing transformer. A ultimately build up to two new transformers in the substation.
References¶
[Amme2017] | (1, 2) J. Amme, G. Pleßmann, J. Bühler, L. Hülk, E. Kötter, P. Schwaegerl: The eGo grid model: An open-source and open-data based synthetic medium-voltage grid model for distribution power supply systems. Journal of Physics Conference Series 977(1):012007, 2018, doi:10.1088/1742-6596/977/1/012007 |
[Huelk2017] | (1, 2) L. Hülk, L. Wienholt, I. Cussmann, U. Mueller, C. Matke and E. Kötter: Allocation of annual electricity consumption and power generation capacities across multi voltage levels in a high spatial resolution. International Journal of Sustainable Energy Planning and Management Vol. 13 2017 79–92, doi:10.5278/ijsepm.2017.13.6 |
[Kerber] | (1, 2) G. Kerber: Aufnahmefähigkeit von Niederspannungsverteilnetzen für die Einspeisung aus Photovoltaikkleinanlagen, Dissertation, TU München, 2011 |
[Scheffler] | (1, 2) J. Scheffler: Bestimmung der maximal zulässigen Netzanschlussleistung photovoltaischer Energiewandlungsanlagen in Wohnsiedlungsgebieten, Dissertation, TU Chemnitz, 2002 |
[Mohrmann] | M. Mohrmann, C. Reese, L. Hofmann, J. Schmiesing: Untersuchung von Niederspannungsverteilnetzen anhand synthetische Netzstrukturen. In: Proceedings of VDE ETG Kongress, 2013 |
[OSM] | OpenStreetMap contributors: Open street map, 2017 |
[VDEAR] | (1, 2) VDE Anwenderrichtlinie: Erzeugungsanlagen am Niederspannungsnetz – Technische Mindestanforderungen für Anschluss und Parallelbetrieb von Erzeugungsanlagen am Niederspannungsnetz, 2011 |
[DINEN50160] | (1, 2) DIN EN 50160 Merkmale der Spannung in öffentlichen Elektrizitätsversorgungsnetzen, 2011 |
[Zdrallek] | Planungs und Betriebsgrundsätze für ländliche Verteilungsnetze – Leitfaden zur Ausrichtung der Netze an ihren zukünftigen Anforderungen, 2016 |
Calculation principles¶
Reactance¶
We assume all cables and overhead lines to be short lines. Thus, the capacity is not considered in calculation of reactance of overhead lines and cables.
Apparent power¶
Given maximum thermal current I_th_amx (I_L) is given per conducter (of three cables in a system)/per phase.
We assume to have delta connection. Thus, nominal voltage per conducted can be applied to calculate apparent power s_nom and conductor current I_L has to be transformed to I_delta respectively to I by
Apparent S power is calculated to
Sign Convention¶
Generators and loads in an AC power system can behave either like an inductor or a capacitor. Mathematically, this has two different sign conventions, either from the generator perspective or from the load perspective. This is defined by the direction of power flow from the component.
Both sign conventions are used in Ding0 depending upon the components being defined, similar to pypsa.
Generator Sign Convention¶

Generator sign convention in detail
Load Sign Convention¶

Load sign convention in detail
Ding0 makes the sign convention easier by allowing the user to provide the string values “inductive” or “capacitive” to describe the behaviour of the different assets better. The sign convention for different parts of ding0 are handled internally. By default, generators are assumed to behave capacitively, while loads are assumed to behave inductively.
Notes to developers¶
If you’re interested to contribute and join the project, feel free to submit PR, contact us, or just create an issue if something seems odd.
Test the package installation¶
Warning
The scripts for testing the installation might be outdated and will be revised in v0.2.1.
We use Docker to test the build of ding0 on a fresh Ubuntu OS. In order to run such a test make sure docker is installed.
cd ./test_installation/
chmod +x install_docker.sh
./install_docker.sh
Afterwards you can test if installation of ding0 builts successfully by executing
./check_ding0_installation.sh
The script ./check_ding0_installation.sh
must be executed in root
directory of ding0 repository. Then it
installs currently checked out version. The installation process can be observed
in the terminal.
Run unit and integration tests¶
ding0 comes with a bunch of unit and integration tests on most features. You’ll need additional packages listed in dev_requirements.txt. To install, use
pip install -r /path/to/ding0/dev_requirements.txt
To run tests with e.g. 4 workers (you may omit this argument), use
cd /path/to/ding0/
pytest --workers 4 -vv
Test ding0 runs¶
The outcome of different runs of ding0 can be compared with the functions in ~/ding0/tools/tests.py.
To compare the default configuration of a fresh run of ding0 and a saved run use
manual_ding0_test()
The default behavior is using district [3545] in oedb database and the data in file ‘ding0_tests_grids_1.pkl’. For other filenames or districts use, for example:
manual_ding0_test([438],'ding0_tests_grids_2.pkl')
To create a file with the output of a ding0 run in the default configuration (disctrict [3545] in oedb database and filename ‘ding0_tests_grids_1.pkl’) use:
init_files_for_tests()
For other filenames or districts use, for example:
init_files_for_tests([438],'ding0_tests_grids_2.pkl')
To run the automatic unittest suite use:
support.run_unittest(Ding0RunTest)
The suite assumes that there are two files allocated in the directory:
- ‘ding0_tests_grids_1.pkl’
- ‘ding0_tests_grids_2.pkl’
It is assummed that these files store the outcome of different runs of ding0 over different districts.
This suite will run three tests:
- Compare the results stored in the files, testing for equality between the data in ‘ding0_tests_grids_1.pkl’ and itself; and for difference between both files.
- Compare the results of a fresh ding0 run over district [3545] and the data in ‘ding0_tests_grids_1.pkl’.
- Compare the results of two fresh runs of ding0 in district [3545].
Database integration¶
Different databases can be used. All communication between ding0 and the used database happens in ding0/tools/egon_data_integration.py. The function to start a session is in ding0/tools/database.py. Start the session with a with statement:
from ding0.tools import database
from ding0.core import NetworkDing0
with database.session_scope() as session:
nd = NetworkDing0(name="network", session=session)
The Object-relational mapping is done in core.NetworkDing0.import_orm. The ORM uses sqlalchemy and saio. The mapping is configured in ding0/config/config_db_tables.cfg. You can select there the database type (model_draft/versioned/local) and submit your local database credentials.
What’s New¶
See what’s new as per release!
Releases
- Release v0.2.1 (May 29, 2021)
- Release v0.2.0 (May 28, 2021)
- Release v0.1.12 September 20, 2019
- Release v0.1.10 November 5, 2018
- Release v0.1.9 October 22, 2018
- Release v0.1.8 September 5, 2018
- Release v0.1.7 July 19, 2018
- Release v0.1.6 July 6, 2018)
- Release v0.1.5 (June 6, 2018)
- Release v0.1.4 (January 17, 2018)
- Release v0.1.3 (September 1, 2017)
- Release v0.1.2 (July 25, 2017)
- Release v0.1.0 (July 25, 2017)
Release v0.2.1 (May 29, 2021)¶
Changes¶
Release to fix ego.io dependency in v0.2.0 (PyPI did not accept git link)
Release v0.2.0 (May 28, 2021)¶
Changes¶
- Added Python 3.8 support #325
- Fix installation with Conda #339
- CSV export in PyPSA format #307 , this required further changes and fixing of tests, cf. #312
- Switched from pyproj1 to pyproj2 for CRS transformations #343
- Reproducible stats by fixing #315, for details see #324
- In the CSV export, (in-building) household loads and generators are no more contained as extra nodes but directly connected to the house’s grid connection point to reduce the number of nodes. #322
- Fix sum capacity of grid generators #326
- Fix PyPI description #311
Release v0.1.12 September 20, 2019¶
Changes¶
- Connection of generators in lv_connect_generators was made deterministic. Before, this happened randomly leading to different lv_grids using the same input data. The network creation is now reproducible while lv_branches were reinforced differently before. Should solve #245 and at least parts of #40.
- A proper sign convention (see Sign Convention) for P,Q is introduced #266, see also PR #271.
- Identification of critical nodes by VDE norm AR 4105 fixed. All power flows behind node are taken into account now. Solves #300.
- Tests for MV and LV grids are introduced.
Additionally, synthetically created grids are introduced, that can be used for
testing.
These tests verify the functionality of most of the functions in
grids
including the creation and modification of MV and LV grids (e.g. adding generators/transformators..). Focus lies on the appropriate creation of the graphs and it’s corresponding routings. Tests are done in grids created with oedb-extracted data and/or synthetic grids, depending on the feature being tested. - Equipment table data is cleaned so that only necessary literature values are used. Should solve #296
- Labels of all components were made unique.
- ding0 now works without an OpenEnergy DataBase account thanks to changes in the ego.io package that allow readonly queries without a token.
Release v0.1.10 November 5, 2018¶
This release introduces new plotting functionalities.
Changes¶
- New plotting function
plot_mv_topology()
allows plots of the MV grid including grid topology with line loadings and node voltages. You can simply fire it using an MVGrid instance or pass argumentexport_figures=True
torun_ding0()
to export some key figures. - Find a new Jupyter notebook example here (sorry, currently only in German).
- Fix animation feature in
mv_routing()
to allow image export of routing process. - Minor bugfixes
Release v0.1.9 October 22, 2018¶
This release fixes the API documentation at readthedocs and the examples.
Release v0.1.8 September 5, 2018¶
A release to update software dependencies.
- Data processing and ego.io versions are updated to 0.4.5
Release v0.1.7 July 19, 2018¶
A release to update software dependencies.
- Explicit dependencies of Pyomo and Scipy are removed
Release v0.1.6 July 6, 2018)¶
- Update of underlying data version to v0.4.2 of open_eGo data processing
Release v0.1.5 (June 6, 2018)¶
This release provides an update of API docs.
Release v0.1.4 (January 17, 2018)¶
This release provides some fixes, a largely extended export function for statistical information about the grid data and an update of input data.
Added features¶
- Use data of data processing v0.3.0 and egoio v0.3.0
- Python 3.4 compatible (removed some Python3.5+ introduced feature calls)
- Export of statistical key figures in addition to to_dataframe() added
- Now uses PyPSA v0.11.0
Bug fixes¶
Other changes¶
- Generators with unknown subtype have subtype ‘unknown’ now
- Circuit breakers are closed now #224
- Version upgrade of Pandas eDisGo #22
- Documentation about usage is updated and extended
- Upgrade of versions of dependencies
- oemof.db is now replace by egoio’s connection provider
Release v0.1.3 (September 1, 2017)¶
This release fixes bugs reported by first users of Ding0 (data). Furthermore, some features related to the use of Ding0 are added.
Added features¶
Bug fixes¶
Other changes¶
- Update Pandas dependency to 0.20.3
- Update PyPSA dependency to 0.10.0
Release v0.1.2 (July 25, 2017)¶
Renaming of package: dingo to ding0
Release v0.1.0 (July 25, 2017)¶
As this is the first release of ding0, we built everything from scratch.
ding0¶
ding0 package¶
Subpackages¶
ding0.config package¶
Submodules¶
ding0.config.config_db_interfaces module¶
-
class
ding0.config.config_db_interfaces.
sqla_mv_grid_viz
(**kwargs)[source]¶ Bases:
sqlalchemy.ext.declarative.api.Base
SQLAlchemy table definition for the export of MV grids for visualization purposes
#TODO: Check docstrings before definitions! is that ok?
-
class
ding0.config.config_db_interfaces.
sqla_mv_grid_viz_branches
(**kwargs)[source]¶ Bases:
sqlalchemy.ext.declarative.api.Base
SQLAlchemy table definition for the export of MV grids’ branches for visualization purposes
#TODO: Check docstrings after definitions! is that ok?
Module contents¶
ding0.core package¶
Subpackages¶
-
class
ding0.core.network.cable_distributors.
LVCableDistributorDing0
(**kwargs)[source]¶ Bases:
ding0.core.network.CableDistributorDing0
LV Cable distributor (connection point)
-
string_id
¶ Description #TODO
-
branch_no
¶ Description #TODO
-
load_no
¶ Description #TODO
-
in_building
¶ Description #TODO
-
-
class
ding0.core.network.cable_distributors.
MVCableDistributorDing0
(**kwargs)[source]¶ Bases:
ding0.core.network.CableDistributorDing0
MV Cable distributor (connection point)
-
lv_load_area_group
¶ Description #TODO
-
-
class
ding0.core.network.loads.
LVLoadDing0
(**kwargs)[source]¶ Bases:
ding0.core.network.LoadDing0
Load in LV grids
Note
Current attributes to fulfill requirements of typified model grids.
-
class
ding0.core.network.loads.
MVLoadDing0
(**kwargs)[source]¶ Bases:
ding0.core.network.LoadDing0
Load in MV grids
Note
Currently not used, check later if still required
-
class
ding0.core.network.stations.
LVStationDing0
(**kwargs)[source]¶ Bases:
ding0.core.network.StationDing0
Defines a LV station in DINGO
-
peak_generation
¶ Calculates cumulative peak generation of generators connected to underlying LV grid.
This is done instantaneously using bottom-up approach.
Returns: float – Cumulative peak generation
-
-
class
ding0.core.network.stations.
MVStationDing0
(**kwargs)[source]¶ Bases:
ding0.core.network.StationDing0
Defines a MV station in DINGO
-
peak_generation
(mode)[source]¶ Calculates cumulative peak generation of generators connected to underlying grids
This is done instantaneously using bottom-up approach.
Parameters: mode ( str
) –determines which generators are included:
'MV': Only generation capacities of MV level are considered. 'MVLV': Generation capacities of MV and LV are considered (= cumulative generation capacities in entire MVGD).
Returns: float – Cumulative peak generation
-
pypsa_bus0_id
¶ Returns specific ID for representing bus in pypsa network. Representative node at high voltage side (also used for transformer)
Returns: str
– Representative of pypsa bus
-
pypsa_bus_id
¶ Returns specific ID for representing bus in pypsa network.
Returns: str
– Representative of pypsa bus
-
select_transformers
()[source]¶ Selects appropriate transformers for the HV-MV substation.
The transformers are chosen according to max. of load case and feedin-case considering load factors. The HV-MV transformer with the next higher available nominal apparent power is chosen. If one trafo is not sufficient, multiple trafos are used. Additionally, in a second step an redundant trafo is installed with max. capacity of the selected trafos of the first step according to general planning principles for MV distribution grids (n-1).
Parameters: Note
Parametrization of transformers bases on [1].
Potential hv-mv-transformers are chosen according to [2].
References
[1] Deutsche Energie-Agentur GmbH (dena), “dena-Verteilnetzstudie. Ausbau- und Innovationsbedarf der Stromverteilnetze in Deutschland bis 2030.”, 2012 [2] X. Tao, “Automatisierte Grundsatzplanung von Mittelspannungsnetzen”, Dissertation, 2006
-
-
class
ding0.core.network.
BranchDing0
(**kwargs)[source]¶ Bases:
object
When a network has a set of connections that don’t form into rings but remain as open stubs, these are designated as branches. Typically Branches at the MV level branch out of Rings.
-
type
¶ Association to pandas Series. DataFrame with attributes of line/cable.
Type: pandas.DataFrame
-
connects_aggregated
¶ A boolean True or False to mark if branch is connecting an aggregated Load Area or not. Defaults to False.
Type: :obj`bool`
-
circuit_breaker
¶ The circuit breaker that opens or closes this Branch.
Type: :class:`~.ding0.core.network.CircuitBreakerDing0
Note
Important: id_db is not set until whole grid is finished (setting at the end).
ADDED FOR NEW LV GRID APPROACH: geometry : shapely.LineString
due to for lv grids the coordinates of nodes and edges are known coordinates are stored as LineString to enable visualisation of the right course of the road.-
network
¶ Getter for the overarching
NetworkDing0
object.Returns: NetworkDing0
-
-
class
ding0.core.network.
CableDistributorDing0
(**kwargs)[source]¶ Bases:
object
Cable distributor (connection point)
-
geo_data
¶ The geo-spatial point in the coordinate reference system with the SRID:4326 or epsg:4326, this is the project used by the ellipsoid WGS 84.
Type: Shapely Point object
-
grid
¶ The MV grid that this ring is to be a part of.
Type: MVGridDing0
-
network
¶ Getter for the overarching
NetworkDing0
object.Returns: NetworkDing0
-
-
class
ding0.core.network.
CircuitBreakerDing0
(**kwargs)[source]¶ Bases:
object
Class for modelling a circuit breaker
-
geo_data
¶ The geo-spatial point in the coordinate reference system with the SRID:4326 or epsg:4326, this is the project used by the ellipsoid WGS 84.
Type: Shapely Point object
-
branch
¶ The branch to which the Cable Distributor belongs to
Type: BranchDing0
-
branch_nodes
¶ A tuple containing a pair of ding0 node objects i.e.
GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
.Type: tuple
Note
Circuit breakers are nodes of a graph, but are NOT connected via an edge. They are associated to a specific branch of a graph (and the branch refers to the circuit breaker via the attribute circuit_breaker) and its two branch_nodes. Via open() and close() the associated branch can be removed from or added to graph.
-
network
¶ Getter for the overarching
NetworkDing0
object.Returns: NetworkDing0
-
-
class
ding0.core.network.
GeneratorDing0
(**kwargs)[source]¶ Bases:
object
Generators (power plants of any kind)
-
name
¶ This is a name that can be given by the user. This defaults to a name automatically generated.
Type: str
-
geo_data
¶ The geo-spatial point in the coordinate reference system with the SRID:4326 or epsg:4326, this is the project used by the ellipsoid WGS 84.
Type: Shapely Point object
-
mv_grid
¶ The MV grid that this ring is to be a part of.
Type: MVGridDing0
-
lv_load_area
¶ The LV Load Area the the generator is a part of.
Type: LVLoadAreaDing0
-
lv_grid
¶ The LV Grid that the Generator is a part of.
Type: LVGridDing0
-
capacity_factor
¶ The generators capacity factor i.e. the ratio of the average power generated by the generator versus the generator capacity.
Type: float
-
type
¶ The generator’s type, an option amongst:
- solar
- wind
- geothermal
- reservoir
- pumped_storage
- run_of_river
- gas
- biomass
- coal
- lignite
- gas
- gas_mine
- oil
- waste
- uranium
- other_non_renewable
Type: str
-
subtype
¶ The generator’s subtype, an option amongst:
- solar_roof_mounted
- solar_ground_mounted
- wind_onshore
- wind_offshore
- hydro
- geothermal
- biogas_from_grid
- biomass
- biogas
- biofuel
- biogas_dry_fermentation
- gas_mine
- gas_sewage
- gas_landfill
- gas
- waste_wood
- wood
Type: str
-
network
¶ Getter for the overarching
NetworkDing0
object.Returns: NetworkDing0
-
-
class
ding0.core.network.
GeneratorFluctuatingDing0
(**kwargs)[source]¶ Bases:
ding0.core.network.GeneratorDing0
Generator object for fluctuating renewable energy sources
-
class
ding0.core.network.
GridDing0
(**kwargs)[source]¶ Bases:
object
The fundamental abstract class used to encapsulate the networkx graph and the relevant attributes of a power grid irrespective of voltage level. By design, this class is not expected to be instantiated directly. This class was designed to be inherited by
MVGridDing0
or byLVGridDing0
.Parameters: - network (
NetworkDing0
) – The overarchingCableDistributorDing0
object that this object is connected to. - id_db (
str
) – id according to database table - grid_district (Shapely Polygon object) – class, area that is covered by the lv grid
- v_level (
int
) – The integer value of the voltage level of the Grid in kV. Typically, either 10 or 20.
-
cable_distributors
[source]¶ List of
CableDistributorDing0
ObjectsType: list
-
loads
[source]¶ List of of
LoadDing0
Objects. These are objects meant to be considered as MV-Level loadsType: list
-
generators
[source]¶ list
ofGeneratorDing0
orGeneratorFluctuatingDing0
Objects. These are objects meant to be considered as MV-Level Generators.Type: list
-
graph
¶ The networkx graph of the network. Initially this is an empty graph which gets populated differently depending upon which child class inherits this class, either
LVGridDing0
orMVGridDing0
.Type: NetworkX Graph Objnetworkx.Graph
-
add_generator
(generator)[source]¶ Adds a generator to
_generators
and grid graph if not already existingParameters: generator ( GeneratorDing0
orGeneratorFluctuatingDing0
) – Ding0’s generator object
-
cable_distributors
()[source] Provides access to the cable distributors in the grid.
Returns: list
– List generator ofCableDistributorDing0
objects
-
cable_distributors_count
()[source]¶ Returns the count of cable distributors in grid
Returns: int
– Count of theCableDistributorDing0
objects
-
control_generators
(capacity_factor)[source]¶ Sets capacity factor of all generators of a grid.
A capacity factor of 0.6 means that all generators are to provide a capacity of 60% of their nominal power.
Parameters: capacity_factor ( float
) – Value between 0 and 1.
-
find_and_union_paths
(node_source, nodes_target)[source]¶ Determines shortest paths from node_source to all nodes in node_target in _graph using find_path().
The branches of all paths are stored in a set - the result is a list of unique branches.
Parameters: - node_source (
GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
) – source node, member of _graph, ding0 node object - node_target (
GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
) – target node, member of _graph, ding0 node object
Returns: list
– List ofBranchDing0
objects- node_source (
-
find_path
(node_source, node_target, type='nodes')[source]¶ Determines shortest path
Determines the shortest path from node_source to node_target in _graph using networkx’ shortest path algorithm.
Parameters: - node_source (
GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
) – source node, member of _graph, ding0 node object - node_target (
GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
) – target node, member of _graph, ding0 node object - type (
str
) – Specify if nodes or edges should be returned. Default is nodes
Returns: list
– List of ding0 node object i.e.GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
- path (shortest path from node_source to) – node_target (list of nodes in _graph)
Note
WARNING: The shortest path is calculated using the count of hops, not the actual line lengths! As long as the circuit breakers are open, this works fine since there’s only one path. But if they are closed, there are 2 possible paths. The result is a path which have min. count of hops but might have a longer total path length than the second sone. See networkx’ function shortest_path() function for details on how the path is calculated.
- node_source (
-
generators
()[source] Returns a generator for iterating over grid’s generators
Returns: list
generator – List ofGeneratorDing0
andGeneratorFluctuatingDing0
objects
-
graph
Provide access to the graph
-
graph_add_node
(node_object)[source]¶ Adds a station or cable distributor object to grid graph if not already existing
Parameters: node_object ( GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
) – The ding0 node object to be added to the graph
-
graph_branches_from_node
(node)[source]¶ Returns branches that are connected to node
Parameters: node ( GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
) – Ding0 node object (member of graph)Returns: list
– List oftuple
objects i.e. List of tuples (node, branch inBranchDing0
)(node , branch_0 ), ..., (node , branch_N ),
node in ding0 is either
GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
-
graph_draw
(mode)[source]¶ Draws grid graph using networkx
This method is for debugging purposes only. Use
plot_mv_topology()
for advanced plotting.Parameters: mode ( str
) – Mode selection ‘MV’ or ‘LV’.Note
The geo coords (for used crs see database import in class NetworkDing0) are used as positions for drawing but networkx uses cartesian crs. Since no coordinate transformation is performed, the drawn graph representation is falsified!
-
graph_edges
()[source]¶ Returns a generator for iterating over graph edges
The edge of a graph is described by the two adjacent node and the branch object itself. Whereas the branch object is used to hold all relevant power system parameters.
Returns: dict
generator –Dictionary generator with the keys:
- adj_nodes paired to the Ding0 node object i.e.
GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
- branch paried with the Ding0 branch object
BranchDing0
Note
There are generator functions for nodes (Graph.nodes()) and edges (Graph.edges()) in NetworkX but unlike graph nodes, which can be represented by objects, branch objects can only be accessed by using an edge attribute (‘branch’ is used here)
To make access to attributes of the branch objects simpler and more intuitive for the user, this generator yields a dictionary for each edge that contains information about adjacent nodes and the branch object.
Note, the construction of the dictionary highly depends on the structure of the in-going tuple (which is defined by the needs of networkX). If this changes, the code will break.
- adj_nodes paired to the Ding0 node object i.e.
-
graph_isolated_nodes
()[source]¶ Finds isolated nodes = nodes with no neighbors (degree zero)
Returns: list
– List of ding0 node objects i.e.GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
-
graph_nodes_from_branch
(branch)[source]¶ Returns nodes that are connected by branch i.e. a
BranchDing0
object.Parameters: branch ( BranchDing0
) –Returns: tuple
– Tuple of node objects in ding0. 2-tuple of Ding0 node objects i.e.GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
-
graph_nodes_sorted
()[source]¶ Returns an sorted list of graph’s nodes. The nodes are arranged based on the name in ascending order.
Returns: list
– List ofGeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
-
graph_path_length
(node_source, node_target)[source]¶ Calculates the absolute distance between node_source and node_target in meters using find_path() and branches’ length attribute.
- node_source:
GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
- source node, member of _graph, ding0 node object
- node_target:
GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
orMVLoadDing0
- target node, member of _graph, ding0 node object
Returns: float
– path length in meters- node_source:
- network (
-
class
ding0.core.network.
LoadDing0
(**kwargs)[source]¶ Bases:
object
Class for modelling a load
-
geo_data
¶ The geo-spatial point in the coordinate reference system with the SRID:4326 or epsg:4326, this is the project used by the ellipsoid WGS 84.
Type: Shapely Point object
-
network
¶ Getter for the overarching
NetworkDing0
object.Returns: NetworkDing0
-
-
class
ding0.core.network.
RingDing0
(**kwargs)[source]¶ Bases:
object
Represents a medium voltage Ring.
Parameters: grid ( MVGridDing0
) – The MV grid that this ring is to be a part of.-
branches
()[source]¶ Getter for the branches in the
RingDing0
object.Returns: list
generator – List generator ofBranchDing0
objects
-
lv_load_areas
()[source]¶ Getter for the LV Load Areas that this Ring covers.
Returns: list
generator – List generator ofLVLoadAreaDing0
objects
-
network
¶ Getter for the overarching
NetworkDing0
object.Returns: NetworkDing0
-
-
class
ding0.core.network.
StationDing0
(**kwargs)[source]¶ Bases:
object
The abstract definition of a substation irrespective of voltage level. This object encapsulates the attributes that can appropriately represent a station in a networkx graph as a node. By design, this class is not expected to be instantiated directly. This class was designed to be inherited by
MVStationDing0
or byLVStationDing0
.Parameters: - id_db (
str
) – id according to database table - v_level_operation (
float
) – operation voltage level in kilovolts (kV) at station (the station’s voltage level differs from the nominal voltage level of the grid due to grid losses). It is usually set to a slightly higher value than the nominal voltage, e.g. 104% in MV grids. - geo_data (Shapely Point object) – The geo-spatial point in the coordinate reference system with the SRID:4326 or epsg:4326, this is the project used by the ellipsoid WGS 84.
- grid (
GridDing0
) – Either aMVGridDing0
orMVGridDing0
object - _transformers (
list
of) –TransformerDing0
objects
-
add_transformer
(transformer)[source]¶ Adds a transformer to _transformers if not already existing
Parameters: transformer ( TransformerDing0
) – TheTransformerDing0
object to be added to the currentStationDing0
-
network
¶ Getter for the overarching
NetworkDing0
objectReturns: NetworkDing0
-
peak_load
¶ Cumulative peak load of loads connected to underlying MV or LV grid
(taken from MV or LV Grid District -> top-down)
Returns: float
– Peak load of the currentStationDing0
objectNote
This peak load includes all loads which are located within Grid District: When called from MV station, all loads of all Load Areas are considered (peak load was calculated in MVGridDistrictDing0.add_peak_demand()). When called from LV station, all loads of the LVGridDistrict are considered.
-
transformers
()[source]¶ Returns a generator for iterating over transformers
Returns: list
generator – List generator ofTransformerDing0
objects
- id_db (
-
class
ding0.core.network.
TransformerDing0
(**kwargs)[source]¶ Bases:
object
Transformers are essentially voltage converters, which enable to change between voltage levels based on the usage.
-
grid
¶ The MV grid that this ring is to be a part of.
Type: MVGridDing0
-
network
¶ Getter for the overarching
NetworkDing0
object.Returns: NetworkDing0
-
-
class
ding0.core.powerflow.
PFConfigDing0
(**kwargs)[source]¶ Bases:
object
Defines the PF scenario configuration
Parameters: - scenarios (
list
ofstr
) – List of strings describing the scenarios - timerange (
list
of pandas.DatetimeIndex) – List of Pandas DatetimeIndex objects - timesteps_count (
int
) – count of timesteps the timesteps to be created - timestep_start (pandas.DatetimeIndex) – Description #TODO
- resolution (
str
) –String or pandas offset object, e.g. ‘H’=hourly resolution,
to learn more see http://pandas.pydata.org/pandas-docs/stable/timeseries.html#offset-aliases
- srid (type) – partial reference system indentifier used by PyPSA’s plots #TODO
Note
This class can be called as follows:
With scenarios and timeranges:
scenarios = ['scn_1', ..., 'scn_n'], timeranges= [timerange_1, ..., timerange_n]
With scenarios, start time and count of timesteps:
scenarios = ['scn_1', ..., 'scn_n'], timesteps_count = m, timestep_start = datetime()
(in this case, n timeranges with m timesteps starting from datetime will be created)
-
resolution
¶ Returns resolution
-
scenarios
¶ Returns a generator for iterating over PF scenarios
-
srid
¶ Returns SRID
-
timesteps
¶ Returns a generator for iterating over PF timesteps
- scenarios (
-
class
ding0.core.structure.groups.
LoadAreaGroupDing0
(**kwargs)[source]¶ Bases:
object
Container for small load_areas / load areas (satellites).
A group of stations which are within the same satellite string. It is required to check whether a satellite string has got more load or string length than allowed, hence new nodes cannot be added to it.
-
mv_grid_district
¶ Desc
Type: Shapely Polygon object
-
add_lv_load_area
(lv_load_area)[source]¶ Adds a LV load_area to _lv_load_areas if not already existing
Parameters: lv_load_area (Shapely Polygon object) – Descr
-
can_add_lv_load_area
(node)[source]¶ Sums up peak load of LV stations
That is, total peak load for satellite string
Parameters: node ( GridDing0
) – DescrReturns: obj: bool – True if ????
-
lv_load_areas
()[source]¶ Returns a generator for iterating over load_areas
Yields: int – generator for iterating over load_areas
-
network
¶
-
-
class
ding0.core.structure.regions.
LVGridDistrictDing0
(**kwargs)[source]¶ Bases:
ding0.core.structure.RegionDing0
Describes region that is covered by a single LV grid
Parameters: - geo_data (Shapely Polygon object) – The geo-spatial polygon in the coordinate reference system with the SRID:4326 or epsg:4326, this is the project used by the ellipsoid WGS 84.
- lv_load_area (Shapely Polygon object) – Descr
- lv_grid (Shapely Polygon object) – Descr
- population (
float
) – Descr - peak_load_residential (
float
) – Descr - peak_load_retail (
float
) – Descr - peak_load_industrial (
float
) – Descr - peak_load_agricultural (
float
) – Descr - peak_load (
float
) – Descr - sector_count_residential (
int
) – Descr - sector_count_retail (
int
) – Descr - sector_count_industrial (
int
) – Descr - sector_count_agricultural (
int
) – Descr
TODO UPDATE DESCR FOR GRAPH AND BUILDINGS
-
network
¶
-
class
ding0.core.structure.regions.
LVLoadAreaCentreDing0
(**kwargs)[source]¶ Bases:
object
Defines a region centre in Ding0.
The centres are used in the MV routing as nodes.
Note
Centre is a point within a region’s polygon that is located most central (e.g. in a simple region shape like a circle it’s the geometric center).
Parameters: - id_db (
int
) – unique ID in database (=id of associated load area) - grid (
int
) – Descr - geo_data (Shapely Point object) – The geo-spatial point in the coordinate reference system with the SRID:4326 or epsg:4326, this is the project used by the ellipsoid WGS 84.
- lv_load_area (
LVLoadAreaDing0
) – Descr
-
network
¶
- id_db (
-
class
ding0.core.structure.regions.
LVLoadAreaDing0
(**kwargs)[source]¶ Bases:
ding0.core.structure.RegionDing0
Defines a LV-load_area in DINGO
-
mv_grid_district
¶ Descr
Type: Shapely Polygon object
-
lv_load_area_centre
¶ Descr
Type: Shapely Point object
-
lv_load_area_group
¶ Descr
Type: Shapely Polygon object
-
db_data
¶ Descr
Type: pandas.DatetimeIndex
-
# new osm approach
-
load_area_graph
¶ contains all streets in load_area
Type: networkx.MultiDiGraph
-
add_lv_grid_district
(lv_grid_district)[source]¶ Adds a LV grid district to _lv_grid_districts if not already existing
Parameters: lv_grid_district (Shapely Polygon object) – Descr
-
add_mv_load
(mv_load)[source]¶ Adds a MVLoad to _lv_grid_districts if not already existing
Parameters: mv_load (ding0.core.network.MVLoadDing0) –
-
lv_grid_districts
()[source]¶ Returns a generator for iterating over LV grid districts
Yields: int – generator for iterating over LV grid districts
-
lv_grid_districts_count
()[source]¶ Returns the count of LV grid districts
Returns: int – Number of LV grid districts.
-
network
¶
-
peak_generation
¶ Cumulative peak generation of generators connected to LV grids of underlying LVGDs
-
-
class
ding0.core.structure.regions.
MVGridDistrictDing0
(**kwargs)[source]¶ Bases:
ding0.core.structure.RegionDing0
Defines a MV-grid_district in DfINGO
-
geo_data
¶ The geo-spatial Polygon in the coordinate reference system with the SRID:4326 or epsg:4326, this is the project used by the ellipsoid WGS 84.
Type: Shapely Polygon object
-
add_lv_load_area
(lv_load_area)[source]¶ Adds a Load Area lv_load_area to _lv_load_areas if not already existing
Additionally, adds the associated centre object to MV grid’s _graph as node.
Parameters: lv_load_area (LVLoadAreaDing0) – instance of class LVLoadAreaDing0
-
add_lv_load_area_group
(lv_load_area_group)[source]¶ Adds a LV load_area to _lv_load_areas if not already existing.
-
add_peak_demand
()[source]¶ Summarizes peak loads of underlying load_areas in kVA.
(peak load sum and peak load of satellites)
-
lv_load_area_groups
()[source]¶ Returns a generator for iterating over LV load_area groups.
Yields: int – generator for iterating over LV load_areas
-
lv_load_area_groups_count
()[source]¶ Returns the count of LV load_area groups in MV region
Returns: int – Number of LV load_area groups in MV region.
-
lv_load_areas
()[source]¶ Returns a generator for iterating over load_areas
Yields: int – generator for iterating over load_areas
-
network
¶
-
Module contents¶
ding0.flexopt package¶
Submodules¶
ding0.flexopt.check_tech_constraints module¶
-
ding0.flexopt.check_tech_constraints.
check_load
(grid, mode)[source]¶ Checks for over-loading of branches and transformers for MV or LV grid.
Parameters: - grid (
GridDing0
) – Grid identifier. - mode (
str
) – Kind of grid (‘MV’ or ‘LV’).
Returns: dict
– Dict of critical branches with max. relative overloading, and the following format:{ branch_1: rel_overloading_1, ..., branch_n: rel_overloading_n }
list
ofTransformerDing0
objects –List of critical transformers with the following format:
[trafo_1, ..., trafo_m]
Note
Lines’/cables’ max. capacity (load case and feed-in case) are taken from [1].
References
[1] dena VNS - grid (
-
ding0.flexopt.check_tech_constraints.
check_voltage
(grid, mode)[source]¶ Checks for voltage stability issues at all nodes for MV or LV grid
Parameters: - grid (
GridDing0
) – Grid identifier. - mode (
str
) – Kind of grid (‘MV’ or ‘LV’).
Returns: list
of Ding0 node object (member of graph) either –GeneratorDing0
orGeneratorFluctuatingDing0
orLoadDing0
orStationDing0
orCircuitBreakerDing0
orCableDistributorDing0
List of critical nodes, sorted descending by voltage difference.
Note
The examination is done in two steps, according to [2] :
- It is checked #TODO: what?
- #TODO: what’s next?
References
[2] dena VNS - grid (
-
ding0.flexopt.check_tech_constraints.
get_critical_line_loading
(grid)[source]¶ Assign line loading to each branch determined by peak load and peak generation of descendant branches
The attribute s_res is a list of two elements 1. apparent power in load case 2. apparent power in feed-in case
Parameters: grid ( LVGridDing0
) – Ding0 LV grid objectReturns:
-
ding0.flexopt.check_tech_constraints.
get_critical_voltage_at_nodes
(grid)[source]¶ Estimate voltage drop/increase induced by loads/generators connected to the grid.
Based on voltage level at each node of the grid critical nodes in terms of exceed tolerable voltage drop/increase are determined. The tolerable voltage drop/increase is defined by [3] a adds up to 3 % of nominal voltage. The longitudinal voltage drop at each line segment is estimated by a simplified approach (neglecting the transverse voltage drop) described in [3].
Two equations are available for assessing voltage drop/ voltage increase.
The first is used to assess a voltage drop in the load case
The second equation can be used to assess the voltage increase in case of feedin. The only difference is the negative sign before X. This is related to consider a voltage drop due to inductive operation of generators.
Symbol Description Voltage drop/increase at node Apparent power Short-circuit resistance Short-circuit reactance Power factor Nominal voltage Parameters: grid ( LVGridDing0
) – Ding0 LV grid objectNote
The implementation highly depends on topology of LV grid. This must not change its topology from radial grid with stubs branching from radial branches. In general, the approach of [3] is only applicable to grids of radial topology.
We consider the transverse voltage drop/increase by applying the same methodology successively on results of main branch. The voltage drop/increase at each house connection branch (aka. stub branch or grid connection point) is estimated by superposition based on voltage level in the main branch cable distributor.
References
[3] (1, 2, 3) VDE Anwenderrichtlinie: Erzeugungsanlagen am Niederspannungsnetz – Technische Mindestanforderungen für Anschluss und Parallelbetrieb von Erzeugungsanlagen am Niederspannungsnetz, 2011
-
ding0.flexopt.check_tech_constraints.
get_cumulated_conn_gen_load
(graph, node)[source]¶ Get generation capacity/ peak load of all descending nodes
Parameters: - graph (NetworkX Graph Obj) – Directed graph
- node (graph node) – Node of the main branch of LV grid
Returns: list
– A list containing two items# cumulated peak load of connected loads at descending nodes of node # cumulated generation capacity of connected generators at descending nodes of node
-
ding0.flexopt.check_tech_constraints.
get_delta_voltage_preceding_line
(grid, tree, node)[source]¶ Parameters: - grid (
LVGridDing0
) – Ding0 grid object - tree (NetworkX Graph Obj) – Tree of grid topology
- node (graph node) – Node at end of line
Returns: float
– Voltage drop over preceding line of node- grid (
-
ding0.flexopt.check_tech_constraints.
get_mv_impedance_at_voltage_level
(grid, voltage_level)[source]¶ Determine MV grid impedance (resistance and reactance separately)
Parameters: - grid (
LVGridDing0
) – - voltage_level (float) – voltage level to which impedance is rescaled (normally 0.4 kV for LV)
Returns: list
– List containing resistance and reactance of MV grid- grid (
-
ding0.flexopt.check_tech_constraints.
get_voltage_at_bus_bar
(grid, tree)[source]¶ Determine voltage level at bus bar of MV-LV substation
Parameters: - grid (
LVGridDing0
) – Ding0 grid object - tree (NetworkX Graph Obj) – Tree of grid topology:
Returns: list
– Voltage at bus bar. First item refers to load case, second item refers to voltage in feedin (generation) case- grid (
-
ding0.flexopt.check_tech_constraints.
get_voltage_delta_branch
(tree, node, r, x)[source]¶ Determine voltage for a branch with impedance r + jx
Parameters: - tree (NetworkX Graph Obj) – Tree of grid topology
- node (graph node) – Node to determine voltage level at
- r (float) – Resistance of preceeding branch
- x (float) – Reactance of preceeding branch
Returns: float
– Delta voltage for branch
-
ding0.flexopt.check_tech_constraints.
peak_load_generation_at_node
(nodes)[source]¶ Get maximum occuring load and generation at a certain node
Summarizes peak loads and nominal generation power of descendant nodes of a branch
Parameters: nodes ( list
) – Any LV grid Ding0 node object that is part of the grid topologyReturns:
-
ding0.flexopt.check_tech_constraints.
voltage_delta_vde
(v_nom, s_max, r, x, cos_phi)[source]¶ Estimate voltrage drop/increase
The VDE [4] proposes a simplified method to estimate voltage drop or increase in radial grids.
Parameters: - v_nom (
int
) – Nominal voltage - s_max (
float
) – Apparent power - r (
float
) – Short-circuit resistance from node to HV/MV substation (in ohm) - x (
float
) – Short-circuit reactance from node to HV/MV substation (in ohm). Must be a signed number indicating (+) inductive reactive consumer (load case) or (-) inductive reactive supplier (generation case) - cos_phi (
float
) – The cosine phi of the connected generator or load that induces the voltage change
Returns: float
– Voltage drop or increaseReferences
[4] VDE Anwenderrichtlinie: Erzeugungsanlagen am Niederspannungsnetz – Technische Mindestanforderungen für Anschluss und Parallelbetrieb von Erzeugungsanlagen am Niederspannungsnetz, 2011 - v_nom (
ding0.flexopt.reinforce_grid module¶
-
ding0.flexopt.reinforce_grid.
reinforce_grid
(grid, mode)[source]¶ Evaluates grid reinforcement needs and performs measures
Grid reinforcement according to methods described in [VNSRP] supplemented by [DENA].
Parameters: - grid (
GridDing0
) – Grid instance - mode (
str
) – Choose of: ‘MV’ or ‘LV’
Note
Currently only MV branch reinforcement is implemented. HV-MV stations are not reinforced since not required for status-quo scenario.
References
[DENA] Deutsche Energie-Agentur GmbH (dena), “dena-Verteilnetzstudie. Ausbau- und Innovationsbedarf der Stromverteilnetze in Deutschland bis 2030.”, 2012 [VNSRP] Ackermann, T., Untsch, S., Koch, M., & Rothfuchs, H. (2014). Verteilnetzstudie Rheinland-Pfalz. Hg. v. Ministerium für Wirtschaft, Klimaschutz, Energie und Landesplanung Rheinland-Pfalz (MWKEL). energynautics GmbH. - grid (
ding0.flexopt.reinforce_measures module¶
-
ding0.flexopt.reinforce_measures.
extend_substation
(grid, critical_stations, grid_level)[source]¶ Reinforce MV or LV substation by exchanging the existing trafo and installing a parallel one if necessary.
First, all available transformers in a critical_stations are extended to maximum power. If this does not solve all present issues, additional transformers are build.
Parameters: Note
Curently straight forward implemented for LV stations
Returns: type – #TODO: Description of return. Change type in the previous line accordingly
-
ding0.flexopt.reinforce_measures.
extend_substation_voltage
(crit_stations, grid_level='LV')[source]¶ Extend substation if voltage issues at the substation occur
Follows a two-step procedure:
- Existing transformers are extended by replacement with large nominal apparent power
- New additional transformers added to substation (see ‘Note’)
Parameters: Note
At maximum 2 new of largest (currently 630 kVA) transformer are additionally built to resolve voltage issues at MV-LV substation bus bar.
-
ding0.flexopt.reinforce_measures.
extend_trafo_power
(extendable_trafos, trafo_params)[source]¶ Extend power of first trafo in list of extendable trafos
Parameters: - extendable_trafos (
list
) – Trafos with rated power below maximum size available trafo - trafo_params (pandas.DataFrame) – Transformer parameters
- extendable_trafos (
-
ding0.flexopt.reinforce_measures.
new_substation
(grid)[source]¶ Reinforce MV grid by installing a new primary substation opposite to the existing one
Parameters: grid ( MVGridDing0
) – MV Grid identifier.
-
ding0.flexopt.reinforce_measures.
reinforce_branches_current
(grid, crit_branches)[source]¶ Reinforce MV or LV grid by installing a new branch/line type
Parameters: - grid (
GridDing0
) – Grid identifier. - crit_branches (dict) – Dict of critical branches with max. relative overloading.
Note
The branch type to be installed is determined per branch using the rel. overloading. According to [5] only cables are installed.
References
[5] Ackermann et al. (RP VNS) - grid (
-
ding0.flexopt.reinforce_measures.
reinforce_branches_voltage
(grid, crit_branches, grid_level='MV')[source]¶ Reinforce MV or LV grid by installing a new branch/line type
Parameters: Note
The branch type to be installed is determined per branch - the next larger cable available is used. According to Ackermann only cables are installed.
-
ding0.flexopt.reinforce_measures.
reinforce_lv_branches_overloading
(grid, crit_branches)[source]¶ Choose appropriate cable type for branches with line overloading
Parameters: - grid (
LVGridDing0
) – Ding0 LV grid object - crit_branches (
list
) – List of critical branches incl. its line loading
Note
If maximum size cable is not capable to resolve issue due to line overloading largest available cable type is assigned to branch.
Returns: list
– unsolved_branches : List of braches no suitable cable could be found- grid (
ding0.flexopt.reinforce_measures_dena module¶
-
ding0.flexopt.reinforce_measures_dena.
extend_substation
(grid)[source]¶ Reinforce MV or LV substation by exchanging the existing trafo and installing a parallel one if necessary with according to dena
Parameters: grid ( GridDing0
) – Grid identifier.Returns: type – #TODO: Description of return. Change type in the previous line accordingly
-
ding0.flexopt.reinforce_measures_dena.
new_substation
(grid)[source]¶ Reinforce MV grid by installing a new primary substation opposite to the existing one according to dena
Parameters: grid ( MVGridDing0
) – Grid identifier.Returns: type – #TODO: Description of return. Change type in the previous line accordingly
-
ding0.flexopt.reinforce_measures_dena.
parallel_branch
(grid, node_target)[source]¶ Reinforce MV or LV grid by installing a new parallel branch according to dena
Parameters: - grid (
GridDing0
) – Grid identifier. - node_target (
int
) – node where the parallel cable (starting from HV/MV substation) is connected to (used when grid is a MV grid)
Returns: type – #TODO: Description of return. Change type in the previous line accordingly
- grid (
Module contents¶
ding0.grid package¶
Subpackages¶
-
ding0.grid.lv_grid.build_grid.
build_lv_graph_residential
(lvgd, selected_string_df)[source]¶ Builds nxGraph based on the LV grid model
Parameters: - lvgd (LVGridDistrictDing0) – Low-voltage grid district object
- selected_string_df (pandas.DataFrame) – Table of strings of the selected grid model
Note
To understand what is happening in this method a few data table columns are explained here
- count house branch: number of houses connected to a string
- distance house branch: distance on a string between two house branches
- string length: total length of a string
- length house branch A|B: cable from string to connection point of a house
A|B in general brings some variation in to the typified model grid and refer to different length of house branches and different cable types respectively different cable widths.
-
ding0.grid.lv_grid.build_grid.
build_lv_graph_ria
(lvgd, grid_model_params)[source]¶ Build graph for LV grid of sectors retail/industrial and agricultural
Based on structural description of LV grid topology for sectors retail/industrial and agricultural (RIA) branches for these sectors are created and attached to the LV grid’s MV-LV substation bus bar.
LV loads of the sectors retail/industrial and agricultural are located in separat branches for each sector (in case of large load multiple of these). These loads are distributed across the branches by an equidistant distribution.
This function accepts the dict grid_model_params with particular structure
>>> grid_model_params = { >>> ... 'agricultural': { >>> ... 'max_loads_per_branch': 2 >>> ... 'single_peak_load': 140, >>> ... 'full_branches': 2, >>> ... 'remaining_loads': 1, >>> ... 'load_distance': 800/3, >>> ... 'load_distance_remaining': 400}}
Parameters: - lvgd (LVGridDistrictDing0) – Low-voltage grid district object
- grid_model_params (dict) –
Dict of structural information of sectoral LV grid branchwith particular structure, e.g.:
grid_model_params = { 'agricultural': { 'max_loads_per_branch': 2 'single_peak_load': 140, 'full_branches': 2, 'remaining_loads': 1, 'load_distance': 800/3, 'load_distance_remaining': 400 } }
Note
We assume a distance from the load to the branch it is connected to of 30 m. This assumption is defined in the config files.
-
ding0.grid.lv_grid.build_grid.
build_residential_branches
(lvgd)[source]¶ Based on population and identified peak load data, the according grid topology for residential sector is determined and attached to the grid graph
Parameters: lvgd (LVGridDistrictDing0) – Low-voltage grid district object
-
ding0.grid.lv_grid.build_grid.
build_ret_ind_agr_branches
(lvgd)[source]¶ Determine topology of LV grid for retail/industrial and agricultural sector and create representative graph of the grid
Parameters: lvgd (LVGridDistrictDing0) – Low-voltage grid district object
-
ding0.grid.lv_grid.build_grid.
grid_model_params_ria
(lvgd)[source]¶ Determine grid model parameters for LV grids of sectors retail/industrial and agricultural
Parameters: lvgd (LVGridDistrictDing0) – Low-voltage grid district object Returns: dict
– Structural description of (parts of) LV grid topology
-
ding0.grid.lv_grid.build_grid.
select_grid_model_residential
(lvgd)[source]¶ Selects typified model grid based on population
Parameters: lvgd (LVGridDistrictDing0) – Low-voltage grid district object Returns: - pandas.DataFrame – Selected string of typified model grid
- pandas.DataFrame – Parameters of chosen Transformer
Note
In total 196 distinct LV grid topologies are available that are chosen by population in the LV grid district. Population is translated to number of house branches. Each grid model fits a number of house branches. If this number exceeds 196, still the grid topology of 196 house branches is used. The peak load of the LV grid district is uniformly distributed across house branches.
-
ding0.grid.lv_grid.build_grid.
select_grid_model_ria
(lvgd, sector)[source]¶ Select a typified grid for retail/industrial and agricultural
Parameters: - lvgd (ding0.core.structure.regions.LVGridDistrictDing0) – Low-voltage grid district object
- sector (
str
) – Either ‘retail/industrial’ or ‘agricultural’. Depending on choice different parameters to grid topology apply
Returns: dict
– Parameters that describe branch lines of a sector
-
ding0.grid.lv_grid.build_grid.
select_transformers
(grid, s_max=None)[source]¶ Selects LV transformer according to peak load of LV grid district.
The transformers are chosen according to max. of load case and feedin-case considering load factors and power factor. The MV-LV transformer with the next higher available nominal apparent power is chosen. Therefore, a max. allowed transformer loading of 100% is implicitly assumed. If the peak load exceeds the max. power of a single available transformer, multiple transformer are build.
By default peak_load and peak_generation are taken from grid instance. The behavior can be overridden providing s_max as explained in
Arguments
.Parameters: - grid (LVGridDing0) – LV grid data
- s_max (dict) –
dict containing maximum apparent power of load or generation case and str describing the case. For example
{ 's_max': 480, 'case': 'load' }
or
{ 's_max': 120, 'case': 'gen' }
s_max passed overrides grid.grid_district.peak_load respectively grid.station().peak_generation.
Returns: - pandas.DataFrame – Parameters of chosen Transformer
int
– Count of transformers
Note
The LV transformer with the next higher available nominal apparent power is chosen. Therefore, a max. allowed transformer loading of 100% is implicitly assumed. If the peak load exceeds the max. power of a single available transformer, use multiple trafos.
-
ding0.grid.lv_grid.check.
get_branches
(grid)[source]¶ Individual graphs of sectoral loads
Parameters: geid – Returns:
-
ding0.grid.lv_grid.check.
overloading
(graph)[source]¶ Check a grid for line overloading due to current exceeding I_th_max
Parameters: graph (networkx.Graph) – Graph structure as container for a grid topology including its equipment Returns: overloaded (tuple) – Pairwise edges of graph a maximum occuring current
-
ding0.grid.lv_grid.lv_connect.
lv_connect_generators
(mv_grid, graph, debug=False)[source]¶ Connect LV generators to LV grid
Parameters: - lv_grid_district (LVGridDistrictDing0) – LVGridDistrictDing0 object for which the connection process has to be done
- graph (NetworkX Graph Obj) – NetworkX graph object with nodes
- debug (bool, defaults to False) – If True, information is printed during process
Returns: NetworkX Graph Obj – NetworkX graph object with nodes and newly created branches
Based on code by Romulo Oliveira copyright (C) 2015, https://github.com/RomuloOliveira/monte-carlo-cvrp Originally licensed under the Apache License, Version 2.0. You may obtain a copy of the license at http://www.apache.org/licenses/LICENSE-2.0
-
class
ding0.grid.mv_grid.models.models.
Graph
(data)[source]¶ Bases:
object
Class for modelling a CVRP problem data
Parameters: data (type) – TSPLIB parsed data -
distance
(i, j)[source]¶ Returns the distance between node i and node j
Parameters: Returns: float – Distance between node i and node j.
-
-
class
ding0.grid.mv_grid.models.models.
Node
(name, demand)[source]¶ Bases:
object
CVRP node (MV transformer/customer)
Parameters: - name – Node name
- demand – Node demand
-
class
ding0.grid.mv_grid.models.models.
Route
(cvrp_problem)[source]¶ Bases:
object
CVRP route, consists of consecutive nodes
Parameters: cvrp_problem (type) – Descr -
calc_circuit_breaker_position
(debug=False)[source]¶ Calculates the optimal position of a circuit breaker on route.
Parameters: debug (bool, defaults to False) – If True, prints process information. Returns: int – position of circuit breaker on route (index of last node on 1st half-ring preceding the circuit breaker) Note
According to planning principles of MV grids, a MV ring is run as two strings (half-rings) separated by a circuit breaker which is open at normal operation. Assuming a ring (route which is connected to the root node at either sides), the optimal position of a circuit breaker is defined as the position (virtual cable) between two nodes where the conveyed current is minimal on the route. Instead of the peak current, the peak load is used here (assuming a constant voltage).
The circuit breakers are used here for checking tech. constraints only and will be re-located after connection of satellites and stations in ding0.grid.mv_grid.tools.set_circuit_breakers
References
See also
ding0.grid.mv_grid.tools.set_circuit_breakers()
-
can_allocate
(nodes, pos=None)[source]¶ Returns True if this route can allocate nodes in nodes list
Parameters: Returns: bool – True if this route can allocate nodes in nodes list
-
clone
()[source]¶ Returns a deep copy of self
Function clones:
- allocation
- nodes
Returns: type – Deep copy of self
-
deallocate
(nodes)[source]¶ Deallocates all nodes from nodes list from this route
Parameters: nodes (type) – Desc
-
insert
(nodes, pos)[source]¶ Inserts all nodes from nodes list into this route at position pos
Parameters:
-
is_interior
(node)[source]¶ Returns True if node is interior to the route, i.e., not adjascent to depot
Parameters: nodes (type) – Desc Returns: bool – True if node is interior to the route
-
last
(node)[source]¶ Returns True if node is the last node in the route
Parameters: nodes (type) – Desc Returns: bool – True if node is the last node in the route
-
length_from_nodelist
(nodelist)[source]¶ Returns the route length (cost) from the first to the last node in nodelist
-
nodes
()[source]¶ Returns a generator for iterating over nodes
Yields: type – Generator for iterating over nodes
-
tech_constraints_satisfied
()[source]¶ Check route validity according to technical constraints (voltage and current rating)
It considers constraints as
- current rating of cable/line
- voltage stability at all nodes
Note
The validation is done for every tested MV grid configuration during CVRP algorithm. The current rating is checked using load factors from [1]. Due to the high amount of steps the voltage rating cannot be checked using load flow calculation. Therefore we use a simple method which determines the voltage change between two consecutive nodes according to [2]. Furthermore it is checked if new route has got more nodes than allowed (typ. 2*10 according to [3]).
References
[1] Deutsche Energie-Agentur GmbH (dena), “dena-Verteilnetzstudie. Ausbau- und Innovationsbedarf der Stromverteilnetze in Deutschland bis 2030.”, 2012 [2] M. Sakulin, W. Hipp, “Netzaspekte von dezentralen Erzeugungseinheiten, Studie im Auftrag der E-Control GmbH”, TU Graz, 2004 [3] Klaus Heuck et al., “Elektrische Energieversorgung”, Vieweg+Teubner, Wiesbaden, 2007 [4] FGH e.V.: “Technischer Bericht 302: Ein Werkzeug zur Optimierung der Störungsbeseitigung für Planung und Betrieb von Mittelspannungsnetzen”, Tech. rep., 2008
-
Based on code by Romulo Oliveira copyright (C) 2015, https://github.com/RomuloOliveira/monte-carlo-cvrp Originally licensed under the Apache License, Version 2.0. You may obtain a copy of the license at http://www.apache.org/licenses/LICENSE-2.0
-
class
ding0.grid.mv_grid.solvers.base.
BaseSolution
(cvrp_problem)[source]¶ Bases:
object
Base abstract class for a CVRP solution
Parameters: cvrp_problem (type) – Desc Graph instance? -
can_process
(pairs)[source]¶ Returns True if this solution can process pairs
Parameters: pairs ( list
of pairs) – List of pairsReturns: bool – True if this solution can process pairs Todo
Not yet implemented
-
clone
()[source]¶ Returns a deep copy of self
Function clones:
- route
- allocation
- nodes
Returns: type – Deep copy of self
-
draw_network
(anim)[source]¶ Draws solution’s graph using networkx
Parameters: AnimationDing0 – AnimationDing0 object
-
get_pair
(pair)[source]¶ get pair description
Parameters: pair ( list
of nodes) – DescrReturns: type – Descr
-
is_complete
()[source]¶ Returns True if this is a complete solution, i.e, all nodes are allocated
Returns: bool – True if all nodes are llocated.
-
Based on code by Romulo Oliveira copyright (C) 2015, https://github.com/RomuloOliveira/monte-carlo-cvrp Originally licensed under the Apache License, Version 2.0. You may obtain a copy of the license at http://www.apache.org/licenses/LICENSE-2.0
-
class
ding0.grid.mv_grid.solvers.local_search.
LocalSearchSolution
(cvrp_problem, solution)[source]¶ Bases:
ding0.grid.mv_grid.solvers.base.BaseSolution
Solution class for Local Search metaheuristic
Parameters: - cvrp_problem (type) – Descr
- solution (BaseSolution) – Descr
-
class
ding0.grid.mv_grid.solvers.local_search.
LocalSearchSolver
[source]¶ Bases:
ding0.grid.mv_grid.solvers.base.BaseSolver
Improve initial savings solution using local search
The implementation of the local searach algorithm founds on the following publications [1], [2], [3], [4]
Graph operators:
Or-Opt (intra-route) Relocate (inter-route) Exchange (inter-route)
Todo
- Cross (inter-route) - to remove crossing edges between two routes
References
[1] - Wenger, “Multikriterielle Tourenplanung”, Dissertation, 2009
[2] - Kämpf, “Probleme der Tourenbildung”, Chemnitzer Informatik-Berichte, 2006
[3] O. Bräysy, M. Gendreau, “Vehicle Routing Problem with Time Windows, Part I: Route Construction and Local Search Algorithms”, Transportation Science, vol. 39, Issue 1, pp. 104-118, 2005 [4] C. Boomgaarden, “Dynamische Tourenplanung und -steuerung”, Dissertation, 2007 -
benchmark_operator_order
(graph, solution, op_diff_round_digits)[source]¶ performs all possible permutations of route improvement and prints graph length
Parameters: - graph (NetworkX Graph Obj) – A NetworkX graaph is used.
- solution (BaseSolution) – BaseSolution instance
- op_diff_round_digits (float) –
Precision (floating point digits) for rounding route length differences.
Details: In some cases when an exchange is performed on two routes with one node each, the difference between the both solutions (before and after the exchange) is not zero. This is due to internal rounding errors of float type. So the loop won’t break (alternating between these two solutions), we need an additional criterion to avoid this behaviour: A threshold to handle values very close to zero as if they were zero (for a more detailed description of the matter see http://floating-point-gui.de or https://docs.python.org/3.5/tutorial/floatingpoint.html)
-
operator_cross
(graph, solution, op_diff_round_digits)[source]¶ applies Cross inter-route operator to solution
Takes every node from every route and calculates savings when inserted into all possible positions in other routes. Insertion is done at position with max. saving and procedure starts over again with newly created graph as input. Stops when no improvement is found.
Parameters: - graph (NetworkX Graph Obj) – Descr
- solution (BaseSolution) – Descr
- op_diff_round_digits (float) –
Precision (floating point digits) for rounding route length differences.
Details: In some cases when an exchange is performed on two routes with one node each, the difference between the both solutions (before and after the exchange) is not zero. This is due to internal rounding errors of float type. So the loop won’t break (alternating between these two solutions), we need an additional criterion to avoid this behaviour: A threshold to handle values very close to zero as if they were zero (for a more detaisled description of the matter see http://floating-point-gui.de or https://docs.python.org/3.5/tutorial/floatingpoint.html)
Returns: LocalSearchSolution – A solution (LocalSearchSolution class)
Todo
- allow moves of a 2-node chain
- Remove ugly nested loops, convert to more efficient matrix operations
-
operator_exchange
(graph, solution, op_diff_round_digits, anim)[source]¶ applies Exchange inter-route operator to solution
Takes every node from every route and calculates savings when exchanged with another one of all possible nodes in other routes. Insertion is done at position with max. saving and procedure starts over again with newly created graph as input. Stops when no improvement is found.
Parameters: - graph (NetworkX Graph Obj) – A NetworkX graaph is used.
- solution (BaseSolution) – BaseSolution instance
- op_diff_round_digits (float) –
Precision (floating point digits) for rounding route length differences.
Details: In some cases when an exchange is performed on two routes with one node each, the difference between the both solutions (before and after the exchange) is not zero. This is due to internal rounding errors of float type. So the loop won’t break (alternating between these two solutions), we need an additional criterion to avoid this behaviour: A threshold to handle values very close to zero as if they were zero (for a more detailed description of the matter see http://floating-point-gui.de or https://docs.python.org/3.5/tutorial/floatingpoint.html)
- anim (AnimationDing0) – AnimationDing0 object
Returns: LocalSearchSolution – A solution (LocalSearchSolution class)
Note
(Inner) Loop variables:
- i: node that is checked for possible moves (position in the route tour, not node name)
- j: node that precedes the insert position in target route (position in the route target_tour, not node name)
Todo
- allow moves of a 2-node chain
- Remove ugly nested loops, convert to more efficient matrix operations
-
operator_oropt
(graph, solution, op_diff_round_digits, anim=None)[source]¶ Applies Or-Opt intra-route operator to solution
Takes chains of nodes (length=3..1 consecutive nodes) from a given route and calculates savings when inserted into another position on the same route (all possible positions). Performes best move (max. saving) and starts over again with new route until no improvement is found.
Parameters: - graph (NetworkX Graph Obj) – A NetworkX graaph is used.
- solution (BaseSolution) – BaseSolution instance
- op_diff_round_digits (float) –
Precision (floating point digits) for rounding route length differences.
Details: In some cases when an exchange is performed on two routes with one node each, the difference between the both solutions (before and after the exchange) is not zero. This is due to internal rounding errors of float type. So the loop won’t break (alternating between these two solutions), we need an additional criterion to avoid this behaviour: A threshold to handle values very close to zero as if they were zero (for a more detailed description of the matter see http://floating-point-gui.de or https://docs.python.org/3.5/tutorial/floatingpoint.html)
- anim (AnimationDing0) – AnimationDing0 object
Returns: LocalSearchSolution – A solution (LocalSearchSolution class)
Note
Since Or-Opt is an intra-route operator, it has not to be checked if route can allocate (Route’s method can_allocate()) nodes during relocation regarding max. peak load/current because the line/cable type is the same along the entire route. However, node order within a route has an impact on the voltage stability so the check would be actually required. Due to large line capacity (load factor of lines/cables ~60 %) the voltage stability issues are neglected.
(Inner) Loop variables:
- s: length (count of consecutive nodes) of the chain that is moved. Values: 3..1
- i: node that precedes the chain before moving (position in the route tour, not node name)
- j: node that precedes the chain after moving (position in the route tour, not node name)
Todo
- insert literature reference for Or-algorithm here
- Remove ugly nested loops, convert to more efficient matrix operations
-
operator_relocate
(graph, solution, op_diff_round_digits, anim)[source]¶ applies Relocate inter-route operator to solution
Takes every node from every route and calculates savings when inserted into all possible positions in other routes. Insertion is done at position with max. saving and procedure starts over again with newly created graph as input. Stops when no improvement is found.
Parameters: - graph (NetworkX Graph Obj) – A NetworkX graaph is used.
- solution (BaseSolution) – BaseSolution instance
- op_diff_round_digits (float) –
Precision (floating point digits) for rounding route length differences.
Details: In some cases when an exchange is performed on two routes with one node each, the difference between the both solutions (before and after the exchange) is not zero. This is due to internal rounding errors of float type. So the loop won’t break (alternating between these two solutions), we need an additional criterion to avoid this behaviour: A threshold to handle values very close to zero as if they were zero (for a more detailed description of the matter see http://floating-point-gui.de or https://docs.python.org/3.5/tutorial/floatingpoint.html)
- anim (AnimationDing0) – AnimationDing0 object
Returns: LocalSearchSolution – A solution (LocalSearchSolution class)
Note
(Inner) Loop variables:
- i: node that is checked for possible moves (position in the route tour, not node name)
- j: node that precedes the insert position in target route (position in the route target_tour, not node name)
Todo
- Remove ugly nested loops, convert to more efficient matrix operations
-
solve
(graph, savings_solution, timeout, debug=False, anim=None)[source]¶ Improve initial savings solution using local search
Parameters: - graph (NetworkX Graph Obj) – Graph instance
- savings_solution (SavingsSolution) – initial solution of CVRP problem (instance of SavingsSolution class)
- timeout (
int
) – max processing time in seconds - debug (bool, defaults to False) – If True, information is printed while routing
- anim (AnimationDing0) – AnimationDing0 object
Returns: LocalSearchSolution – A solution (LocalSearchSolution class)
Based on code by Romulo Oliveira copyright (C) 2015, https://github.com/RomuloOliveira/monte-carlo-cvrp Originally licensed under the Apache License, Version 2.0. You may obtain a copy of the license at http://www.apache.org/licenses/LICENSE-2.0
-
class
ding0.grid.mv_grid.solvers.savings.
ClarkeWrightSolver
[source]¶ Bases:
ding0.grid.mv_grid.solvers.base.BaseSolver
Clark and Wright Savings algorithm solver class
-
compute_savings_list
(graph)[source]¶ Compute Clarke and Wright savings list
A saving list is a matrix containing the saving amount S between i and j
S is calculated by S = d(0,i) + d(0,j) - d(i,j) (CLARKE; WRIGHT, 1964)
Parameters: graph (NetworkX Graph Obj) – A NetworkX graaph is used. Returns: list
of Node – List of nodes sorted by its savings
-
solve
(graph, timeout, debug=False, anim=None)[source]¶ Solves the CVRP problem using Clarke and Wright Savings methods
Parameters: - graph (NetworkX Graph Obj) – A NetworkX graaph is used.
- timeout (
int
) – max processing time in seconds - debug (bool, defaults to False) – If True, information is printed while routing
- anim (AnimationDing0) –
Returns: SavingsSolution – A solution
-
-
class
ding0.grid.mv_grid.solvers.savings.
SavingsSolution
(cvrp_problem)[source]¶ Bases:
ding0.grid.mv_grid.solvers.base.BaseSolution
Solution class for a Clarke and Wright Savings parallel algorithm
-
can_process
(pairs)[source]¶ Returns True if this solution can process pairs
Parameters: pairs ( list
of pairs of Route) – List of pairsReturns: bool – True if this solution can process pairs.
-
clone
()[source]¶ Returns a deep copy of self
Function clones:
- routes
- allocation
- nodes
Returns: SavingsSolution – A clone (deepcopy) of the instance itself
-
Based on code by Romulo Oliveira copyright (C) 2015, https://github.com/RomuloOliveira/monte-carlo-cvrp Originally licensed under the Apache License, Version 2.0. You may obtain a copy of the license at http://www.apache.org/licenses/LICENSE-2.0
-
exception
ding0.grid.mv_grid.util.data_input.
ParseException
(value)[source]¶ Bases:
Exception
Exception raised when something unexpected occurs in a TSPLIB file parsing
Parameters: value (type) – Description
-
ding0.grid.mv_grid.util.data_input.
calculate_euc_distance
(a, b)[source]¶ Calculates Eclidian distances from two points a and b
Parameters: Returns: float – the distance.
-
ding0.grid.mv_grid.util.data_input.
read_file
(filename)[source]¶ Reads a TSPLIB file and returns the problem data.
Parameters: filename ( str
) –Returns: type – Problem specs.
Based on code by Romulo Oliveira copyright (C) 2015, https://github.com/RomuloOliveira/monte-carlo-cvrp Originally licensed under the Apache License, Version 2.0. You may obtain a copy of the license at http://www.apache.org/licenses/LICENSE-2.0
-
ding0.grid.mv_grid.util.util.
print_solution
(solution)[source]¶ Prints a solution
Parameters: solution (BaseSolution) – Example
[8, 9, 10, 7]: 160 [5, 6]: 131 [3, 4, 2]: 154 Total cost: 445
-
ding0.grid.mv_grid.mv_routing.
ding0_graph_to_routing_specs
(graph)[source]¶ Build data dictionary from graph nodes for routing (translation)
Parameters: graph (NetworkX Graph Obj) – NetworkX graph object with nodes Returns: dict
– Data dictionary for routing.See also
ding0.grid.mv_grid.models.models.Graph()
- for keys of return dict
-
ding0.grid.mv_grid.mv_routing.
routing_solution_to_ding0_graph
(graph, solution)[source]¶ Insert solution from routing into graph
Parameters: - graph (NetworkX Graph Obj) – NetworkX graph object with nodes
- solution (BaseSolution) – Instance of BaseSolution or child class (e.g. LocalSearchSolution) (=solution from routing)
Returns: NetworkX Graph Obj – NetworkX graph object with nodes and edges
-
ding0.grid.mv_grid.mv_routing.
solve
(graph, debug=False, anim=None)[source]¶ Do MV routing for given nodes in graph.
Translate data from node objects to appropriate format before.
Parameters: - graph (NetworkX Graph Obj) – NetworkX graph object with nodes
- debug (bool, defaults to False) – If True, information is printed while routing
- anim (AnimationDing0) – AnimationDing0 object
Returns: NetworkX Graph Obj – NetworkX graph object with nodes and edges
See also
ding0.tools.animation.AnimationDing0()
- for a more detailed description on anim parameter.
Submodules¶
ding0.grid.tools module¶
-
ding0.grid.tools.
cable_type
(nom_power, nom_voltage, avail_cables)[source]¶ Determine suitable type of cable for given nominal power
Based on maximum occurring current which is derived from nominal power (either peak load or max. generation capacity) a suitable cable type is chosen. Thus, no line overloading issues should occur.
Parameters: - nom_power (float) – Nominal power of generators or loads connected via a cable
- nom_voltage (float) – Nominal voltage in kV
- avail_cables (pandas.DataFrame) – Available cable types including it’s electrical parameters
Returns: pandas.DataFrame – Parameters of cable type
Module contents¶
ding0.tools package¶
Submodules¶
ding0.tools.animation module¶
-
class
ding0.tools.animation.
AnimationDing0
(**kwargs)[source]¶ Bases:
object
Class for visual animation of the routing process (solving CVRP).
(basically a central place to store information about output file and count of saved images). Use argument ‘animation=True’ of method ‘NetworkDing0.mv_routing()’ to enable image export. The images are exported to ding0’s home dir which is usually ~/.ding0/ .
Subsequently, FFMPEG can be used to convert images to animation, e.g.
ffmpeg -r 5 -i mv-routing_ani_%04d.png -vframes 200 -r 15 -vcodec libx264 -y -an mv-routing_ani.mp4 -s 640x480See also
ding0.core.NetworkDing0.mv_routing
ding0.tools.config module¶
Based on code by oemof development team
This module provides a highlevel layer for reading and writing config files. The config file has to be of the following structure to be imported correctly.
[netCDF]
RootFolder = c://netCDF
FilePrefix = cd2_
[mySQL]
host = localhost
user = guest
password = root
database = znes
[SectionName]
OptionName = value
Option2 = value2
Based on code by oemof development team
-
ding0.tools.config.
get
(section, key)[source]¶ Returns the value of a given key of a given section of the main config file.
Parameters: Returns: float
– the value which will be casted to float, int or boolean. if no cast is successful, the raw string will be returned.See also
ding0.tools.debug module¶
-
ding0.tools.debug.
compare_graphs
(graph1, mode, graph2=None)[source]¶ Compares graph with saved one which is loaded via networkx’ gpickle
Parameters: - graph1 (networkx.graph) – First Ding0 MV graph for comparison
- graph2 (networkx.graph) – Second Ding0 MV graph for comparison. If a second graph is not provided it will be laoded from disk with hard-coded file name.
- mode ('write' or 'compare') –
- Returns –
ding0.tools.geo module¶
-
ding0.tools.geo.
calc_edge_geometry
(node_source, node_target, srid=3035)[source]¶ returns straight edge geometry and related length between two nodes as LineString
Parameters: - node_source (LVStationDing0, GeneratorDing0, or CableDistributorDing0) – source node, member of GridDing0.graph
- node_target (LVStationDing0, GeneratorDing0, or CableDistributorDing0) – target node, member of GridDing0.graph
- srid (defines crs. 4326 by default check config_misc.cfg) –
Returns: - geometry (LineString,)
float
– Distance in m
-
ding0.tools.geo.
calc_geo_branches_in_buffer
(node, mv_grid, radius, radius_inc, proj, srid=3035)[source]¶ NEW PARAM srid=3035 to calculate calc_geo_branches_in_buffer. Before srid=4326 was assumed.
Determines branches in nodes’ associated graph that are at least partly within buffer of radius from node.
If there are no nodes, the buffer is successively extended by radius_inc until nodes are found.
Parameters: - node (LVStationDing0, GeneratorDing0, or CableDistributorDing0) – origin node (e.g. LVStationDing0 object) with associated shapely object (attribute geo_data) in any CRS (e.g. WGS84)
- radius (float) – buffer radius in m
- radius_inc (float) – radius increment in m
- proj (
int
) – pyproj projection object: nodes’ CRS to equidistant CRS (e.g. WGS84 -> ETRS)
Returns: list
of NetworkX Graph Obj – List of branches (NetworkX branch objects)
-
ding0.tools.geo.
calc_geo_branches_in_polygon
(mv_grid, polygon, mode, proj, srid=3035)[source]¶ NEW PARAM srid=3035 to calculate calc_geo_branches_in_buffer. Before srid=4326 was assumed.
Calculate geographical branches in polygon.
For a given mv_grid all branches (edges in the graph of the grid) are tested if they are in the given polygon. You can choose different modes and projections for this operation.
Parameters: - mv_grid (
MVGridDing0
) – MV Grid object. Edges contained in mv_grid.graph_edges() are taken for the test. - polygon (Shapely Point object) – Polygon that contains edges.
- mode (
str
) – Choose between ‘intersects’ or ‘contains’. - proj (
int
) – EPSG code to specify projection
Returns: list
ofBranchDing0
objects – List of branches- mv_grid (
-
ding0.tools.geo.
calc_geo_centre_point
(node_source, node_target, srid=3035)[source]¶ Calculates the geodesic distance between node_source and node_target incorporating the detour factor specified in config_calc.cfg.
Parameters: - node_source (LVStationDing0, GeneratorDing0, or CableDistributorDing0) – source node, member of GridDing0.graph
- node_target (LVStationDing0, GeneratorDing0, or CableDistributorDing0) – target node, member of GridDing0.graph
Returns: float
– Distance in m.
-
ding0.tools.geo.
calc_geo_dist
(node_source, node_target, srid=3035)[source]¶ Calculates the geodesic distance between node_source and node_target incorporating the detour factor specified in
ding0/ding0/config/config_calc.cfg
.Parameters: - node_source (LVStationDing0, GeneratorDing0, or CableDistributorDing0) – source node, member of GridDing0.graph
- node_target (LVStationDing0, GeneratorDing0, or CableDistributorDing0) – target node, member of GridDing0.graph
- srid (defines crs. 4326 by default check config_misc.cfg) –
Returns: float
– Distance in m
-
ding0.tools.geo.
calc_geo_dist_matrix
(nodes_pos, srid=3035)[source]¶ Calculates the geodesic distance between all nodes in nodes_pos incorporating the detour factor in config_calc.cfg.
For every two points/coord it uses geopy’s geodesic function. As default ellipsoidal model of the earth WGS-84 is used. For more options see
https://geopy.readthedocs.io/en/stable/index.html?highlight=geodesic#geopy.distance.geodesic
Parameters: nodes_pos (dict) – dictionary of nodes with positions, with x=longitude, y=latitude, and the following format:
{ 'node_1': (x_1, y_1), ..., 'node_n': (x_n, y_n) }
Returns: dict
–dictionary with distances between all nodes (in km), with the following format:
{ 'node_1': {'node_1': dist_11, ..., 'node_n': dist_1n}, ..., 'node_n': {'node_1': dist_n1, ..., 'node_n': dist_nn} }
ding0.tools.logger module¶
-
ding0.tools.logger.
create_dir
(dirpath)[source]¶ Create directory and report about it
Parameters: dirpath ( str
) – Directory including path
-
ding0.tools.logger.
create_home_dir
(ding0_path=None)[source]¶ Check if ~/.ding0 exists, otherwise create it
Parameters: ding0_path ( str
) – Path to store Ding0 related data (logging, etc)
ding0.tools.plots module¶
ding0.tools.pypsa_io module¶
-
ding0.tools.pypsa_io.
append_bus_v_mag_set_df
(bus_v_mag_set_df, node, node_name=None)[source]¶ Fills bus v_mag_set data needed for power flow calculation
Parameters: - bus_v_mag_set_df (pandas.DataFrame) – Dataframe of buses with entries name, temp_id, v_mag_pu_set
- node (obj:node object of generator) –
- node_name (
str
) – Optional parameter for name of bus
Returns: bus_v_mag_set_df (pandas.DataFrame) – Dataframe of buses with entries name, temp_id, v_mag_pu_set
-
ding0.tools.pypsa_io.
append_buses_df
(buses_df, grid, node, node_name='')[source]¶ Appends buses to dataframe of buses in pypsa format.
Parameters: - buses_df (pandas.DataFrame) – Dataframe of buses with entries name, v_nom, geom, mv_grid_id, lv_grid_id, in_building
- grid (
GridDing0
) – - node –
- node_name (
str
) – name of node, per default is set to node.pypsa_bus_id
Returns: buses_df (pandas.DataFrame) – Dataframe of buses with entries name, v_nom, geom, mv_grid_id, lv_grid_id, in_building
-
ding0.tools.pypsa_io.
append_generator_pq_set_df
(conf, generator_pq_set_df, node)[source]¶ Fills generator pq_set data needed for power flow calculation
Parameters: - conf (
dict
) – dictionary with technical constants - generator_pq_set_df (pandas.DataFrame) – Dataframe of generators with entries name, temp_id, p_set and q_set
- node (obj:node object of generator) –
Returns: generator_pq_set_df (pandas.DataFrame) – Dataframe of generators with entries name, temp_id, p_set and q_set
- conf (
-
ding0.tools.pypsa_io.
append_generators_df
(generators_df, node, name_bus=None)[source]¶ Appends generator to dataframe of generators in pypsa format.
Parameters: - generators_df (pandas.DataFrame) – Dataframe of generators with entries name, bus, control, p_nom, type, weather_cell_id, subtype
- node – GeneratorDing0
- name_bus (
str
) – Optional parameter for name of bus
Returns: generators_df (pandas.DataFrame) – Dataframe of generators with entries name, bus, control, p_nom, type, weather_cell_id, subtype
-
ding0.tools.pypsa_io.
append_lines_df
(edge, lines_df, buses_df)[source]¶ Append edge to lines_df
Parameters: - edge – Edge of Ding0.Network graph
- lines_df (pandas.DataFrame) – Dataframe of lines with entries name, bus0, bus1, length, x, r, s_nom, num_parallel, type, geometry
- buses_df (pandas.DataFrame) – Dataframe of buses with entries name, v_nom, geom, mv_grid_id, lv_grid_id, in_building
Returns: lines_df (pandas.DataFrame) – Dataframe of lines with entries name, bus0, bus1, length, x, r, s_nom, num_parallel, type
-
ding0.tools.pypsa_io.
append_load_area_to_load_df
(sector, load_area, loads_df, name_bus, name_load, return_time_varying_data=False, **kwargs)[source]¶ Appends LVLoadArea or LVGridDistrict to dataframe of loads in pypsa format.
Parameters: - sector (str) – load sector: ‘agricultural’, ‘industrial’, ‘residential’ or ‘retail’
- load_area – LVGridDistrictDing0 or LVLoadAreaDing0, load area of which load is to be aggregated and added
- loads_df (pandas.DataFrame) – Dataframe of loads with entries name, bus, p_set, annual_consumption and sector
- name_bus (
str
) – name of bus to which load is connected - name_load (
str
) – name of load - return_time_varying_data (
bool
) – Determines whether data for power flow calculation is exported as well - kwargs (list of conf, load_pq_set_df) – Both arguments have to be inserted if return_time_varying_data is True.
Returns: - loads_df (pandas.DataFrame) – Dataframe of loads with entries name, bus, p_set, annual_consumption and sector
- load_pq_set_df (pandas.DataFrame) – Dataframe of loads with entries name, temp_id, p_set and q_set, only exported if return_time_varying_data is True
-
ding0.tools.pypsa_io.
append_load_areas_to_df
(loads_df, generators_df, node, return_time_varying_data=False, **kwargs)[source]¶ Appends lv load area (or single lv grid district) to dataframe of loads and generators. Also returns power flow time varying data if return_time_varying_data is True. Each sector (agricultural, industrial, residential, retail) is represented by own entry of load. Each generator in underlying grid districts is added as own entry. Generators and load are connected to BusBar of the respective grid (LVGridDing0 for LVStationDing0 and MVGridDing0 for LVLoadAreaCentreDing0)
Parameters: - loads_df (pandas.DataFrame) – Dataframe of loads with entries name, bus, p_set, annual_consumption, sector
- generators_df (pandas.DataFrame) – Dataframe of generators with entries name, bus, control, p_nom, type, weather_cell_id, subtype
- node – Node, which is either LVStationDing0 or LVLoadAreaCentreDing0
- return_time_varying_data (
bool
) – Determines whether data for power flow calculation is exported as well - kwargs (list of conf, load_pq_set_df, generator_pq_set_df) – All three arguments have to be inserted if return_time_varying_data is True.
Returns: - loads_df (pandas.DataFrame) – Dataframe of loads with entries name, bus, p_set, annual_consumption, sector
- generators_df (pandas.DataFrame) – Dataframe of generators with entries name, bus, control, p_nom, type, weather_cell_id, subtype
- load_pq_set_df (pandas.DataFrame) – Dataframe of loads with entries name, temp_id, p_set and q_set, only exported if return_time_varying_data is True
- generator_pq_set_df (pandas.DataFrame) – Dataframe of generators with entries name, temp_id, p_set and q_set, only exported if return_time_varying_data is True
-
ding0.tools.pypsa_io.
append_load_pq_set_df
(conf, load_pq_set_df, node, node_name=None, peak_load=None)[source]¶ Fills load pq_set data needed for power flow calculation
Parameters: - conf (
dict
) – dictionary with technical constants - load_pq_set_df (pandas.DataFrame) – Dataframe of loads with entries name, temp_id, p_set and q_set
- node (obj:node object of generator) –
- node_name (
str
) – Optional parameter for name of load - p_set (
float
) – Optional parameter for peak_load
Returns: load_pq_set_df (pandas.DataFrame) – Dataframe of loads with entries name, temp_id, p_set and q_set
- conf (
-
ding0.tools.pypsa_io.
append_transformers_df
(transformers_df, trafo, type=nan, bus0=None, bus1=None)[source]¶ Appends transformer to dataframe of buses in pypsa format.
Parameters: - transformers_df (pandas.DataFrame) – Dataframe of trafos with entries name, bus0, bus1, x, r, s_nom, type
- trafo (:obj:TransformerDing0) – Transformer to be added
- type (
str
) – Optional parameter for type of transformer - bus0 (
str
) – Name of primary side bus. Defaults to None and is set to primary side of transformer station by default. - bus1 (
str
) – Name of secondary side bus. Defaults to None and is set to secondary side of transformer station by default.
Returns: transformers_df (pandas.DataFrame) – Dataframe of trafos with entries name, bus0, bus1, x, r, s_nom, type
-
ding0.tools.pypsa_io.
assign_bus_results
(grid, bus_data)[source]¶ Write results obtained from PF to graph
Parameters: - grid (
GridDing0
) – - bus_data (pandas.DataFrame) – DataFrame containing voltage levels obtained from PF analysis
- grid (
-
ding0.tools.pypsa_io.
assign_line_results
(grid, line_data)[source]¶ Write results obtained from PF to graph
Parameters: - grid (
GridDing0
) – - line_data (pandas.DataFrame) – DataFrame containing active/reactive at nodes obtained from PF analysis
- grid (
-
ding0.tools.pypsa_io.
circuit_breakers_to_df
(grid, components, component_data, open_circuit_breakers, return_time_varying_data=False)[source]¶ Appends circuit breakers to component dicts. If circuit breakers are open a virtual bus is added to the respective dataframe and bus1 of the line attached to the circuit breaker is set to the new virtual node.
Parameters: - grid (
GridDing0
) – - components (components:
dict
) – Dictionary of component Dataframes ‘Bus’, ‘Generator’, ‘Line’, ‘Load’, ‘Transformer’ - component_data (
dict
) – Dictionary of component Dataframes ‘Bus’, ‘Generator’, ‘Load’, needed for power flow calculations - open_circuit_breakers (
dict
) – Dictionary containing names of open circuit breakers - return_time_varying_data (
bool
) – States whether time varying data needed for power flow calculations are constructed as well. Set to True to run power flow, set to False to export network to csv.
Returns: - grid (
-
ding0.tools.pypsa_io.
create_powerflow_problem
(timerange, components)[source]¶ Create PyPSA network object and fill with data :param timerange: Time range to be analyzed by PF :type timerange: Pandas DatetimeIndex :param components: :type components: dict
Returns: network (PyPSA powerflow problem object)
-
ding0.tools.pypsa_io.
data_integrity
(components, components_data)[source]¶ Check grid data for integrity
Parameters:
-
ding0.tools.pypsa_io.
edges_to_dict_of_dataframes
(edges, lines_df, buses_df)[source]¶ Export edges to DataFrame
Parameters: - edges (
list
) – Edges of Ding0.Network graph - lines_df (pandas.DataFrame) – Dataframe of lines with entries name, bus0, bus1, length, x, r, s_nom, num_parallel, type
- buses_df (pandas.DataFrame) – Dataframe of buses with entries name, v_nom, geom, mv_grid_id, lv_grid_id, in_building
Returns: edges_dict (dict)
- edges (
-
ding0.tools.pypsa_io.
export_to_dir
(network, export_dir)[source]¶ Exports PyPSA network as CSV files to directory
Parameters: - network (:pypsa:pypsa.Network) –
- export_dir (
str
) – Sub-directory in output/debug/grid/ where csv Files of PyPSA network are exported to.
-
ding0.tools.pypsa_io.
fill_component_dataframes
(grid, buses_df, lines_df, transformer_df, generators_df, loads_df, only_export_mv=False, return_time_varying_data=False)[source]¶ Returns component and if necessary time varying data for power flow or csv export of inserted mv or lv grid
Parameters: - grid (
GridDing0
) – Grid that is exported - buses_df (pandas.DataFrame) – Dataframe of buses with entries name, v_nom, geom, mv_grid_id, lv_grid_id, in_building
- lines_df (pandas.DataFrame) – Dataframe of lines with entries name, bus0, bus1, length, x, r, s_nom, num_parallel, type_info
- transformer_df (pandas.DataFrame) – Dataframe of trafos with entries name, bus0, bus1, x, r, s_nom, type
- generators_df (pandas.DataFrame) – Dataframe of generators with entries name, bus, control, p_nom, type, weather_cell_id, subtype
- loads_df (pandas.DataFrame) – Dataframe of loads with entries name, bus, p_set, annual_consumption, sector
- only_export_mv (
bool
) – - return_time_varying_data (
bool
) – States whether time varying data needed for power flow calculations are constructed as well. Set to True to run power flow, set to False to export network to csv.
Returns: - grid (
-
ding0.tools.pypsa_io.
fill_mvgd_component_dataframes
(mv_grid_district, buses_df, generators_df, lines_df, loads_df, transformer_df, only_export_mv=False, return_time_varying_data=False)[source]¶ Returns component and if necessary time varying data for power flow or csv export of inserted mv grid district
Parameters: - mv_grid_district (
MVGridDistrictDing0
) – - buses_df (pandas.DataFrame) – Dataframe of buses with entries name, v_nom, geom, mv_grid_id, lv_grid_id, in_building
- lines_df (pandas.DataFrame) – Dataframe of lines with entries name, bus0, bus1, length, x, r, s_nom, num_parallel, type
- transformer_df (pandas.DataFrame) – Dataframe of trafos with entries name, bus0, bus1, x, r, s_nom, type
- generators_df (pandas.DataFrame) – Dataframe of generators with entries name, bus, control, p_nom, type, weather_cell_id, subtype
- loads_df (pandas.DataFrame) – Dataframe of loads with entries name, bus, p_set, building_id, annual_consumption, sector
- only_export_mv (
bool
) – Bool that determines export modes for grid district, if True only mv grids are exported with lv grids aggregated at respective station, if False lv grids are fully exported - return_time_varying_data (
bool
) – States whether time varying data needed for power flow calculations are constructed as well. Set to True to run power flow, set to False to export network to csv.
Returns: - mv_components (
dict
) – Dictionary of component Dataframes ‘Bus’, ‘Generator’, ‘Line’, ‘Load’, ‘Transformer’, ‘Switch’ - network_df (pandas.DataFrame) – Dataframe of network containing name, srid, geom and population
- mv_component_data (
dict
) – Dictionary of component Dataframes ‘Bus’, ‘Generator’, ‘Load’, needed for power flow calculations
- mv_grid_district (
-
ding0.tools.pypsa_io.
init_pypsa_network
(time_range_lim)[source]¶ Instantiate PyPSA network :param time_range_lim:
Returns: - network (PyPSA network object) – Contains powerflow problem
- snapshots (iterable) – Contains snapshots to be analyzed by powerplow calculation
-
ding0.tools.pypsa_io.
initialize_component_dataframes
()[source]¶ Initializes and returns empty component dataframes
Returns: - buses_df (pandas.DataFrame) – Dataframe of buses with entries name, v_nom, geom, mv_grid_id, lv_grid_id, in_building
- lines_df (pandas.DataFrame) – Dataframe of lines with entries name, bus0, bus1, length, x, r, s_nom, num_parallel, type, geometry (LineString)
- transformer_df (pandas.DataFrame) – Dataframe of trafos with entries name, bus0, bus1, x, r, s_nom, type
- generators_df (pandas.DataFrame) – Dataframe of generators with entries name, bus, control, p_nom, type, weather_cell_id, subtype
- loads_df (pandas.DataFrame) – Dataframe of loads with entries name, bus, p_set, annual_consumption, sector
-
ding0.tools.pypsa_io.
nodes_to_dict_of_dataframes
(grid, nodes, buses_df, generators_df, loads_df, transformer_df, only_export_mv=False, return_time_varying_data=False)[source]¶ Creates dictionary of dataframes containing grid nodes and transformers
Parameters: - grid (
GridDing0
) – - nodes (
list
of ding0 grid components objects) – Nodes of the grid graph - buses_df (pandas.DataFrame) – Dataframe of buses with entries name, v_nom, geom, mv_grid_id, lv_grid_id, in_building
- generators_df (pandas.DataFrame) – Dataframe of generators with entries name, bus, control, p_nom, type, weather_cell_id, subtype
- loads_df (pandas.DataFrame) – Dataframe of loads with entries name,bus,p_set, building_id, annual_consumption,sector
- transformer_df (pandas.DataFrame) – Dataframe of trafos with entries name, bus0, bus1, x, r, s_nom, type
- only_export_mv (
bool
) – Bool that indicates whether only mv grid should be exported, per default lv grids are exported too - return_time_varying_data (
bool
) – Set to True when running power flow. Then time varying data are returned as well.
Returns: - components (dict of pandas.DataFrame) – DataFrames contain components attributes. Dict is keyed by components type
- component_data (
dict
) – Dictionary of component Dataframes ‘Bus’, ‘Generator’, ‘Load’, needed for power flow calculations, only exported when return_time_varying_data is True empty dict otherwise.
- grid (
-
ding0.tools.pypsa_io.
process_pf_results
(network)[source]¶ Parameters: network (pypsa.Network) – Returns: - bus_data (pandas.DataFrame) – Voltage level results at buses
- line_data (pandas.DataFrame) – Resulting apparent power at lines
-
ding0.tools.pypsa_io.
run_powerflow_onthefly
(components, components_data, grid, export_pypsa_dir=None, debug=False, export_result_dir=None)[source]¶ Run powerflow to test grid stability
- Two cases are defined to be tested here:
- load case
- feed-in case
Parameters: - components (dict of pandas.DataFrame) –
- components_data (dict of pandas.DataFrame) –
- grid (
GridDing0
) – - export_pypsa_dir (
str
) – Sub-directory in output/debug/grid/ where csv Files of PyPSA network are exported to. Export is omitted if argument is empty. - debug (
bool
) – - export_result_dir (
str
) – Directory where csv Files of power flow results are exported to. Export is omitted if argument is empty.
-
ding0.tools.pypsa_io.
select_and_append_load_area_trafos
(aggregated_load_area, node_name, transformer_df)[source]¶ Selects the right trafos for aggregrated load areas and appends them to the transformer dataframe.
Parameters: - aggregated_load_area (LVLoadAreaDing0) – Aggregated load area to be appended
- node_name (str) – Name of LV side bus for appending LV load area
- transformer_df (pandas.DataFrame) – Transformer dataframe of network
Returns: pandas.DataFrame – Transformer dataframe of network with appended transformers
ding0.tools.results module¶
ding0.tools.tests module¶
ding0.tools.tools module¶
-
ding0.tools.tools.
create_poly_from_source
(source_point, left_m, right_m, up_m, down_m)[source]¶ Create a rectangular polygon given a source point and the number of meters away from the source point the edges have to be.
Parameters: - source_point (Shapely Point object) – The start point in WGS84 or epsg 4326 coordinates
- left_m (
float
) – The distance from the source at which the left edge should be. - right_m (
float
) – The distance from the source at which the right edge should be. - up_m (
float
) – The distance from the source at which the upper edge should be. - down_m (
float
) – The distance from the source at which the lower edge should be.
-
ding0.tools.tools.
get_cart_dest_point
(source_point, east_meters, north_meters)[source]¶ Get the WGS84 point in the coordinate reference system epsg 4326 at in given a cartesian form of input i.e. providing the position of the destination point in relative meters east and meters north from the source point. If the source point is (0, 0) and you would like the coordinates of a point that lies 5 meters north and 3 meters west of the source, the bearing in degrees is hard to find on the fly. This function allows the input as follows: >>> get_cart_dest_point(source_point, -3, 5) # west is negative east
Parameters: - source_point (Shapely Point object) – The start point in WGS84 or epsg 4326 coordinates
- east_meters (
float
) – Meters to the east of source, negative number means west - north_meters (
float
) – Meters to the north of source, negative number means south
Returns: Shapely Point object – The point in WGS84 or epsg 4326 coordinates at the destination which is north_meters north of the source and east_meters east of source.
-
ding0.tools.tools.
get_dest_point
(source_point, distance_m, bearing_deg)[source]¶ Get the WGS84 point in the coordinate reference system epsg 4326 at a distance (in meters) from a source point in a given bearing (in degrees) (0 degrees being North and clockwise is positive).
Parameters: - source_point (Shapely Point object) – The start point in WGS84 or epsg 4326 coordinates
- distance_m (
float
) – Distance of destination point from source in meters - bearing_deg (
float
) – Bearing of destination point from source in degrees, 0 degrees being North and clockwise is positive.
Returns: Shapely Point object – The point in WGS84 or epsg 4326 coordinates at the destination which is distance meters away from the source_point in the bearing provided
-
ding0.tools.tools.
merge_two_dicts
(x, y)[source]¶ Given two dicts, merge them into a new dict as a shallow copy.
Parameters: Notes
This function was originally proposed by http://stackoverflow.com/questions/38987/how-to-merge-two-python-dictionaries-in-a-single-expression
Credits to Thomas Vander Stichele. Thanks for sharing ideas!
Returns: dict
– Merged dictionary keyed by top-level keys of both dicts
ding0.tools.validation module¶
ding0.tools.write_openego_header module¶
Module contents¶
Module contents¶
-
ding0.
adapt_numpy_int64
(numpy_int64)[source]¶ Adapting numpy.int64 type to SQL-conform int type using psycopg extension, see [1] for more info.
Parameters: numpy_int64 ( int
) – numpty 64bits integer.Returns: type – #TODO: Description of return. Change type in the previous line accordingly References
[1] http://initd.org/psycopg/docs/advanced.html#adapting-new-python-types-to-sql-syntax