Model Factsheet

Overview / DataProcessing – Data Model of the German Electricity System (part of the open_eGo project) (eGoDP)
Name DataProcessing – Data Model of the German Electricity System (part of the open_eGo project)
Acronym eGoDP
Methodical Focus None
Institution(s) ZNES Flensburg (ZNES), Reiner Lemoine Institut (RLI), DLR Institute of Networked Energy Systems (DLR), Otto-von-Guericke-Universität Magdeburg (OvGU)
Author(s) (institution, working field, active time period) Ludwig Hülk (RLI), Guido Pleßmann (RLI), Ulf Müller (ZNES), Ilka Cußmann (ZNES), Lukas Wienholt (DLR), Martin Glauer (OvGU), GitHub community
Current contact person Ludwig Hülk
Contact (e-mail) ludwig.huelk@rl-institut.de
Website https://openegoproject.wordpress.com/
Logo /media/logos/open_ego_logo.png
Primary Purpose The DataProcessing is a collection of scripts to process input data to be used for the other eGo-Tools. The resulting input data is published and available.
Primary Outputs Main outputs of eGoDP are Substations (EHV/HV, HV/MV, MV/LV), Grid districts (EHV, MV, LV) and Loadareas.
Support / Community / Forum
Framework
Link to User Documentation -
Link to Developer/Code Documentation https://github.com/openego/data_processing
Documentation quality not available
Source of funding BMWi project open_eGo (6. Forschungsprogramm)
Number of developers less than 10
Number of users less than 10
Open Source
License Affero General Public License Version 3
Source code available
GitHub
Access to source code https://github.com/openego/data_processing
Data provided none
Collaborative programming
GitHub Organisation
GitHub Contributions Graph
Modelling software Python, PostgreSQL, pandas, workalender, oemof.db, demandlib, ego.io, geoalchemy2
Internal data processing software Python, PostgreSQL
External optimizer
Additional software
GUI
Modeled energy sectors (final energy) electricity
Modeled demand sectors Households, Industry, Commercial sector
Modeled technologies: components for power generation or conversion
Renewables -
Conventional -
Modeled technologies: components for transfer, infrastructure or grid
Electricity distribution, transmission
Gas -
Heat -
Properties electrical grid AC load flow
Modeled technologies: components for storage -
User behaviour and demand side management
Changes in efficiency
Market models -
Geographical coverage Germany and neighboring countries
Geographic (spatial) resolution national states, regions, NUTS 3, municipalities, districts
Time resolution -
Comment on geographic (spatial) resolution
Observation period -
Additional dimensions (sector) -
Model class (optimisation) -
Model class (simulation) -
Other Data scripts
Short description of mathematical model class
Mathematical objective Data scripts
Approach to uncertainty Deterministic
Suited for many scenarios / monte-carlo
typical computation time more than a day
Typical computation hardware PostgreSQL Database Server (OEP)
Technical data anchored in the model -
Interfaces
Model file format .sql, .py
Input data file format oedb
Output data file format oedb
Integration with other models
Integration of other models
Citation reference https://openegoproject.wordpress.com/publications/
Citation DOI See above
Reference Studies/Models See above
Example research questions How can open data be accessed to generate a data set to compare various models? How can data be extracted with ensured quality?
Model usage -
Model validation -
Example research questions How can open data be accessed to generate a data set to compare various models? How can data be extracted with ensured quality?
further properties Data schemes available: http://oep.iks.cs.ovgu.de/dataedit/schemas
Model specific properties -

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grid open_eGo Germany RLI BMWi Input-data