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Optimal Bidding Strategies in Electricity Markets Using Reinforcement Learning

机译:使用强化学习的电力市场最优竞价策略

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In a deregulated electricity market, optimal bidding strategies are desired by market participants in order to maximize their individual profits. The optimal bidding strategy for a market participant is difficult to be determined by calculus based methods because of the uncertainties and dynamics of the electricity market. As one of a range of the learning techniques, learning automata are applied to this complex optimization problem in this paper. As a model-free method, it has great flexibility and distinct advantages in practice. The proposed method is illustrated by reference to the WSCC 9-bus test system. The simulation results show its feasibility and potential for on-line applications in the electricity market.
机译:在放松管制的电力市场中,市场参与者期望最佳的出价策略,以最大化其个人利润。由于电力市场的不确定性和动态性,难以通过基于演算的方法来确定市场参与者的最佳竞标策略。作为多种学习技术之一,本文将学习自动机应用于这一复杂的优化问题。作为一种无模型方法,它具有很大的灵活性,并且在实践中具有明显的优势。通过参考WSCC 9总线测试系统来说明所提出的方法。仿真结果表明了其在电力市场在线应用的可行性和潜力。

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