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A fault diagnosis method of Smart Grid based on rough sets combined with genetic algorithm and tabu search

机译:基于粗糙集与遗传算法和禁忌搜索相结合的智能电网故障诊断方法

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摘要

Most of the existing methods of fault diagnosis in Smart Grid focus primarily on the information of the protective relays and switches. There is still some incomplete or uncertain information in the process of receiving data. Usually, relying only on the information may obtain wrong conclusions. Large numbers of methods have been applied in the fault diagnosis of power system. An improving accuracy of fault diagnosis method in Smart Grid is put forward in this paper using rough sets combined with genetic algorithm (GA) and Tabu search (TS). The reduction in continuous attributes and their value reduction are the major application of rough sets. The proposed algorithm can combine the parallel global searching capability of genetic algorithm with the local searching ability of Tabu search and significantly improve the efficiency of execution and ensure the optimal result. The effectiveness of the proposed algorithm has been demonstrated using Changchun south substation and its distribution grid. To validate the proposed approach adequately, simulation studies have also been carried out on the simulated Smart Grid model. A series of tests are conducted toward three fault categories: the single faults, the multiple faults, and the loss information faults. All the results demonstrate that the proposed method in this paper is better than the preceding algorithms.
机译:智能电网中大多数现有的故障诊断方法主要集中在保护继电器和开关的信息上。接收数据的过程中仍然存在一些不完整或不确定的信息。通常,仅依靠信息可能会得出错误的结论。在电力系统的故障诊断中已经采用了大量的方法。提出了一种结合粗糙集与遗传算法和禁忌搜索相结合的智能电网故障诊断方法。连续属性的减少及其值的减少是粗糙集的主要应用。提出的算法可以将遗传算法的并行全局搜索能力与禁忌搜索的局部搜索能力结合起来,大大提高了执行效率,保证了最优结果。利用长春南站及其配电网证明了该算法的有效性。为了充分验证所提出的方法,还对模拟的智能电网模型进行了模拟研究。针对三个故障类别进行了一系列测试:单个故障,多个故障和丢失信息故障。所有结果表明,本文提出的方法优于先前的算法。

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