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An implementation of a hybrid intelligent tool for distribution system fault diagnosis

机译:用于配电系统故障诊断的混合智能工具的实现

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摘要

The common fault in distribution systems due to line outages consists of single-line-to-ground (SLG) faults, with low or high fault impedance. The presence of arcing is commonplace in high impedance SLG faults. Recently, artificial intelligence (AI) based techniques have been introduced for low/high impedance fault diagnosis in ungrounded distribution systems and high-impedance fault diagnosis in grounded distribution systems. So far no tool has been developed to identify, locate and classify faults on grounded and ungrounded systems. This paper describes an integrated package for fault diagnosis in either grounded or ungrounded distribution systems. It utilizes rule-based schemes as well as artificial neural networks (ANN) to detect, classify and locate faults. Its application on sample test data as well as field test data are reported in the paper.
机译:配电系统中由于线路中断而引起的常见故障包括具有低或高故障阻抗的单线对地(SLG)故障。在高阻抗SLG故障中,电弧现象很常见。最近,已经引入了基于人工智能(AI)的技术,用于不接地配电系统中的低/高阻抗故障诊断和接地配电系统中的高阻抗故障诊断。到目前为止,还没有开发用于识别,定位和分类接地系统和非接地系统上的故障的工具。本文介绍了用于接地或不接地配电系统中故障诊断的集成软件包。它利用基于规则的方案以及人工神经网络(ANN)来检测,分类和定位故障。本文报道了其在样品测试数据以及现场测试数据中的应用。

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