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Correlated Deep Q-learning based Microgrid Energy Management

机译:基于关联的深度Q学习的微电网能源管理

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Microgrid (MG) energy management is an important part of MG operation. Various entities are generally involved in the energy management of an MG, e.g., energy storage system (ESS), renewable energy resources (RER) and the load of users, and it is crucial to coordinate these entities. Considering the significant potential of machine learning techniques, this paper proposes a correlated deep Q-learning (CDQN) based technique for the MG energy management. Each electrical entity is modeled as an agent which has a neural network to predict its own Q-values, after which the correlated Q-equilibrium is used to coordinate the operation among agents. In this paper, the Long Short Term Memory networks (LSTM) based deep Q-learning algorithm is introduced and the correlated equilibrium is proposed to coordinate agents. The simulation result shows 40.9% and 9.62% higher profit for ESS agent and photovoltaic (PV) agent, respectively.
机译:微电网(MG)能源管理是MG运营的重要组成部分。 MG的能源管理通常涉及各种实体,例如储能系统(ESS),可再生能源(RER)和用户负载,因此协调这些实体至关重要。考虑到机器学习技术的巨大潜力,本文提出了一种基于相关的深度Q学习(CDQN)的MG能量管理技术。每个电气实体都被建模为具有神经网络以预测其自身Q值的代理,然后使用相关的Q平衡来协调代理之间的操作。本文介绍了基于长短期记忆网络(LSTM)的深度Q学习算法,并提出了相关均衡来协调智能体。仿真结果表明,ESS剂和光伏(PV)剂的利润分别提高了40.9%和9.62%。

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