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| |text_description=Maon is a integrated digital platform for electricity market and system analysis. The included electricity market model simulates the annual dispatch of all supply and demand in every bidding zone in Europe. | | |text_description=Maon is a integrated digital platform for electricity market and system analysis. The included electricity market model simulates the annual dispatch of all supply and demand in every bidding zone in Europe. |
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− | Web browsers provide access to the simulation suite that derives electricity price and transmission grid usage forecasts. Runs can be carried out immediately with calibrated input data historical and future scenarios. | + | Web browsers provide access to the simulation suite that derives electricity price and transmission grid usage forecasts. Runs can be carried out immediately with calibrated input data for historical and future scenarios. |
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| Users get support by processing tool kits, data quality checks and geographical visualizations. Unit commitment and market price results are prepared for applications like social welfare analysis or power-flow simulations. | | Users get support by processing tool kits, data quality checks and geographical visualizations. Unit commitment and market price results are prepared for applications like social welfare analysis or power-flow simulations. |
Revision as of 10:44, 8 March 2020
Maon
by Maon GmbH
Authors: Mihail Ketov, Fabian Pfannes, Huangluolun Zhou, Dariush Wahdany, Nicolai Schmid
Contact: Dr.-Ing. Mihail Ketov
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Maon is a integrated digital platform for electricity market and system analysis. The included electricity market model simulates the annual dispatch of all supply and demand in every bidding zone in Europe.
Web browsers provide access to the simulation suite that derives electricity price and transmission grid usage forecasts. Runs can be carried out immediately with calibrated input data for historical and future scenarios.
Users get support by processing tool kits, data quality checks and geographical visualizations. Unit commitment and market price results are prepared for applications like social welfare analysis or power-flow simulations.
Based on C++. Using Kubernetes, Ceph, MinIO, MongoDB, Preact, Node.js, GraphQL, Python, WebAssembly, GCC, cURL, OpenMPI for data processing.
Website / Documentation
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Not Open Source
Not directly downloadable
No data shipped
Not planned to open up further in the future
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Model Scope |
Model type and solution approach |
Model class
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Mixed-Integer Quadratic Programming (MIQP)
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Sectors
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Electricity plus sector couplings (industry, heat, transport, gas)
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Technologies
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Renewables, Conventional Generation, CHP
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Decisions
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dispatch
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Regions
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ENTSO-E members
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Geographic Resolution
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Individual power stations
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Time resolution
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Hour
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Network coverage
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transmission, distribution, AC load flow, DC load flow, net transfer capacities
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Model type
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Optimization, Simulation, Other
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Variables
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100000000
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Computation time
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1000 minutes (backtesting 2018 with detailed hydro, CHP, DSR and FBMC model in hourly resolution with all ENTSO-E bidding zones)
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Objective
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Economic welfare at electricity spot, electricity reserve, and emission markets in Europe
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Uncertainty modeling
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Suited for many scenarios / monte-carlo
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No
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References
Scientific references
Ketov, Mihail (2019). "Marktsimulationen unter Berücksichtigung der Strom-Wärme-Sektorenkopplung", Print Production, Aachener Beiträge zur Energieversorgung, volume 189, PhD thesis, RWTH Aachen University.
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