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Evaluation of the probability of arrester failure in a high-voltage transmission line using a Q learning artificial neural network model

机译:使用Q学习人工神经网络模型评估高压输电线路避雷器故障的可能性

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One of the most popular methods of protecting high voltage transmission lines against lightning strikes and internal overvoltages is the use of arresters. The installation of arresters in high voltage transmission lines can prevent or even reduce the lines' failure rate. Several studies based on simulation tools have been presented in order to estimate the critical currents that exceed the arresters' rated energy stress and to specify the arresters' installation interval. In this work artificial intelligence, and more specifically a Q-learning artificial neural network (ANN) model, is addressed for evaluating the arresters' failure probability. The aims of the paper are to describe in detail the developed Q-learning ANN model and to compare the results obtained by its application in operating 150 kV Greek transmission lines with those produced using a simulation tool. The satisfactory and accurate results of the proposed ANN model can make it a valuable tool for designers of electrical power systems seeking more effective lightning protection, reducing operational costs and better continuity of service.
机译:保护避雷针和内部过电压的高压输电线最流行的方法之一是使用避雷器。在高压输电线路中安装避雷器可以防止甚至减少线路的故障率。为了估计超过避雷器额定能量应力的临界电流并指定避雷器的安装间隔,已经进行了一些基于仿真工具的研究。在这项工作中,提出了人工智能,更具体地说是Q学习人工神经网络(ANN)模型,用于评估避雷器的失效概率。本文的目的是详细描述已开发的Q学习ANN模型,并将其在运行150 kV希腊输电线路中的应用结果与使用仿真工具产生的结果进行比较。所提出的人工神经网络模型令人满意且准确的结果,使其成为电力系统设计人员寻求更有效的防雷,降低运营成本和改善服务连续性的宝贵工具。

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