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Robust fault diagnosis in power distribution systems based on fuzzy ARTMAP neural network-aided evidence theory

机译:基于模糊ARTMAP神经网络证据理论的配电系统鲁棒故障诊断。

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摘要

The present study proposes a methodology for the automatic diagnosis of short-circuit faults in distribution systems using modern techniques for signal analysis and artificial intelligence. This support tool for decision making accelerates the restoration process, providing greater security, reliability and profitability to utilities. The fault detection procedure is performed using statistical and direct analyses of the current waveforms in the wavelet domain. Current and voltage signal features are extracted using discrete wavelet transform, multi-resolution analysis and energy concept. These behavioural indices correspond to the input vectors of three parallel sets of fuzzy ARTMAP neural networks. The network outcomes are integrated by the Dempster–Shafer theory, giving quantitative information about the diagnosis and its reliability. Tests were carried out using a practical distribution feeder from a Brazilian electric utility, and the results show that the method is efficient with a high level of confidence.
机译:本研究提出了一种使用现代信号分析和人工智能技术自动诊断配电系统短路故障的方法。该决策支持工具可加快恢复过程,为公用事业提供更高的安全性,可靠性和收益性。故障检测过程是通过对小波域中的电流波形进行统计和直接分析来执行的。使用离散小波变换,多分辨率分析和能量概念提取电流和电压信号特征。这些行为指标对应于模糊ARTMAP神经网络的三个并行集合的输入向量。网络结果通过Dempster-Shafer理论进行了整合,从而提供了有关诊断及其可靠性的定量信息。使用来自巴西电力公司的实用配电馈线进行了测试,结果表明该方法高效且充满信心。

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