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A multistage stochastic approach for the optimal bidding of variable renewable energy in the day-ahead, intraday and balancing markets

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ABSTRACT: Market agents with renewable resources face amplified uncertainty when forecasting energy production to securely place bids in electricity markets. To deal with uncertainties, stochastic modelling has been applied to optimize the bidding strategy of these market agents. However, studies found in the literature usually focus on day-ahead and balancing markets, leaving aside intraday markets that could be used to correct bidding positions as uncertainty gets resolved. This paper proposes a multistage stochastic decision-aid algorithm based on linear programming to optimize the bidding strategy of market agents in three different electricity markets -day-ahead, intraday, and balance markets. The market agent represents a Virtual Power Plant with wind, solar PV, and storage technologies, and its participation in three electricity markets was compared to the participation in DA and BM markets only. Results show that participating in all three markets increased the profit achieved by the VPP agent by 10.1% while also decreasing the incurred imbalances by 63.8%. The results demonstrate that having accurate tools to deal with the multi-settlement framework of electricity markets while considering the uncertainties of daily operations is key to a successful integration of renewable energy resources into electricity markets and power systems.

Descrição

Palavras-chave

Renewable energy sources Stochastic modelling Storage system Electricity markets Optimization Power systems

Contexto Educativo

Citação

Silva, Ana Rita... [et.al.] - A multistage stochastic approach for the optimal bidding of variable renewable energy in the day-ahead, intraday and balancing markets. In: Energy, 2022, vol. 258, article nº 124856

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Editora

Elsevier

Licença CC

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