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Reinforcement Learning Based Supplier-Agents for Electricity Markets

机译:基于加强学习的电力市场供应商

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Bidding strategies play important roles in maximizing the profits of power suppliers in competitive electricity markets. Therefore, it will be an advantage for a supplier to search for optimal bidding strategies in the market. In this paper the problem of designing Fuzzy Reinforcement Learning (FRL) supplier-agents that compete in forward electricity markets (e.g. Day-Ahead energy market) to maximize their revenues is studied. An IEEE 30-bus power system with 6 generators (supplier-agents) and three demand areas with stochastic loads are used for our simulation studies. This model is applicable to different types of commodity markets with numerous supply and demand agents.
机译:竞标策略在最大化竞争电力市场中的电力供应商的利润方面发挥着重要作用。因此,供应商将有利于寻求市场上最佳竞标策略的优势。在本文中,研究了在竞争向前电市场(例如,前方能源市场)以最大化其收入的模糊强化学习(FRL)供应商的问题。具有6个发电机(供应商 - 代理)和具有随机载荷的三个需求区域的IEEE 30平台电力系统用于我们的仿真研究。该型号适用于具有众多供需代理的不同类型的商品市场。

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