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Optimization Method of Power Equipment Maintenance Plan Decision-Making Based on Deep Reinforcement Learning

机译:基于深度加强学习的电力设备维修计划优化方法

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The safe and reliable operation of power grid equipment is the basis for ensuring the safe operation of the power system. At present, the traditional periodical maintenance has exposed the abuses such as deficient maintenance and excess maintenance. Based on a multiagent deep reinforcement learning decision-making optimization algorithm, a method for decision-making and optimization of power grid equipment maintenance plans is proposed. In this paper, an optimization model of power grid equipment maintenance plan that takes into account the reliability and economics of power grid operation is constructed with maintenance constraints and power grid safety constraints as its constraints. The deep distributed recurrent Q -networks multiagent deep reinforcement learning is adopted to solve the optimization model. The deep distributed recurrent Q -networks multiagent deep reinforcement learning uses the high-dimensional feature extraction capabilities of deep learning and decision-making capabilities of reinforcement learning to solve the multiobjective decision-making problem of power grid maintenance planning. Through case analysis, the comparative results show that the proposed algorithm has better optimization and decision-making ability, as well as lower maintenance cost. Accordingly, the algorithm can realize the optimal decision of power grid equipment maintenance plan. The expected value of power shortage and maintenance cost obtained by the proposed method is $71.75$ $MW·H$ and $496000$ $yuan$.
机译:电网设备的安全可靠运行是确保电力系统安全运行的基础。目前,传统的期刊维护暴露了滥用缺陷,如不足的维护和超额维护。基于多层钢筋学习决策优化算法,提出了一种用于电网设备维护计划的决策和优化方法。本文以考虑电网运行的可靠性和经济性的电网设备维护计划的优化模型,通过维护约束和电网安全约束作为其约束。采用深度分布式复发性Q -NetWorks多源深增强学习来解决优化模型。深度分布式复发性Q-Networks多透视钢筋学习使用深层学习和决策能力的高维特征提取功能,加强学习的决策能力来解决电网维护规划的多目标决策问题。通过案例分析,比较结果表明,该算法具有更好的优化和决策能力,以及降低维护成本。因此,该算法可以实现电网设备维护计划的最佳决策。通过拟议的方法获得的电力短缺和维护成本的预期价值为71.75美元$ MW·H $和$ 496000 $ $ yuan $。

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