Evaluating Uncertainties in Electricity Markets via Machine Learning and Quantum Computing
The analysis of decision-making process in electricity markets is crucial for understanding and resolving issues related to market manipulation and reduced social welfare. Traditional Multi-Agent Reinforcement Learning (MARL) method can model decision-making of generation companies (GENCOs), but fac...
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Zusammenfassung: | The analysis of decision-making process in electricity markets is crucial for
understanding and resolving issues related to market manipulation and reduced
social welfare. Traditional Multi-Agent Reinforcement Learning (MARL) method
can model decision-making of generation companies (GENCOs), but faces
challenges due to uncertainties in policy functions, reward functions, and
inter-agent interactions. Quantum computing offers a promising solution to
resolve these uncertainties, and this paper introduces the Quantum Multi-Agent
Deep Q-Network (Q-MADQN) method, which integrates variational quantum circuits
into the traditional MARL framework. The main contributions of the paper are:
identifying the correspondence between market uncertainties and quantum
properties, proposing the Q-MADQN algorithm for simulating electricity market
bidding, and demonstrating that Q-MADQN allows for a more thorough exploration
and simulates more potential bidding strategies of profit-oriented GENCOs,
compared to conventional methods, without compromising computational
efficiency. The proposed method is illustrated on IEEE 30-bus test network,
confirming that it offers a more accurate model for simulating complex market
dynamics. |
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DOI: | 10.48550/arxiv.2407.16404 |