EURO-Online login
- New to EURO? Create an account
- I forgot my username and/or my password.
- Help with cookies
(important for IE8 users)
597. Optimal Participation of Energy Communities in Electricity Markets under Uncertainty. A Multi-Stage Stochastic Programming Approach.
Invited abstract in session WB-34: Stochastic Optimization: Advanced Applications, stream Stochastic, Robust and Distributionally Robust Optimization.
Wednesday, 10:30-12:00Room: 43 (building: 303A)
Authors (first author is the speaker)
1. | Albert Solà Vilalta
|
Departament d'Estadística i Investigació Operativa, Universitat Politècnica de Catalunya | |
2. | Marlyn Dayana Cuadrado Guevara
|
Statistics and Operations Research, Universitat Politècnica de Catalunya - BarcelonaTech | |
3. | Ignasi Mañé
|
Statistics and Operations Research, Universitat Politècnica de Catalunya - BarcelonaTech | |
4. | F.-Javier Heredia
|
Statistics and Operations Research, Universitat Politècnica de Catalunya - BarcelonaTech |
Abstract
An energy community is a legal figure, recently coined by the European Union, that creates a framework to encourage active participation of citizens and local entities in the energy transition to net-zero. In this work, we study the optimal participation of energy communities in day-ahead, reserve, and intraday electricity markets.
The motivation to do so is that there are time periods where energy communities cannot meet their internal demand, and periods where they generate excess electricity. This is because most of the electricity they generate comes from variable renewable resources like solar and wind. Electricity market participation is a natural way to ensure they meet their internal demand at all times, and, simultaneously, make the most of the excess electricity.
We propose a multi-stage stochastic programming model that captures variable renewable and electricity price uncertainty. The multi-stage aspect models the different times at which variable renewable generation is considered to be known and electricity prices from different markets are revealed. This results in a very large scenario tree with 34 stages, and hence a very large optimization problem. Scenario reduction techniques are applied to make the problem tractable. Case studies with real data are discussed, considering different energy community configurations, to analyse proposed regulatory frameworks in Europe. The added value of considering stochasticity in this problem is also analysed.
Keywords
- Programming, Stochastic
- OR in Energy
- Stochastic Optimization
Status: accepted
Back to the list of papers