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Evaluation of different bidding strategies for a battery energy storage system performing energy arbitrage - a neural network approach

Title
Evaluation of different bidding strategies for a battery energy storage system performing energy arbitrage - a neural network approach
Type
Article in International Conference Proceedings Book
Year
2023
Authors
Santos, P
(Author)
Other
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Rezende, I
(Author)
Other
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Soares, T
(Author)
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Vladimiro Miranda
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Authenticus ID: P-00Y-SXM
Abstract (EN): The rising potential for battery energy storage systems (BESS) to generate revenue in a market environment is addressed in this work, where a tool based on neural network predictions is proposed. The tool's main objective is predicting, based on historical data, the most lucrative out of three established bidding approaches for the participation of a BESS in the day-ahead energy market and thus aid the strategic bidding process of the BESS operator. Each of these bidding strategies reflects BESS's operator approach concerning bidding frequency and the tolerated risk of loss of profit from having its bids rejected, leading to the development of a conservative (strategy A), an aggressive (strategy B), and a moderate strategy (strategy C). A case study was then used to test the tool for a full year allowing to ascertain the assertiveness of this tool in predicting the best strategy, which for this case was above 88%.
Language: English
Type (Professor's evaluation): Scientific
No. of pages: 6
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