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Fault location on transmission lines using complex-domain neural networks

机译:使用复杂域神经网络的输电线路故障定位

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Fault location is a critical task when a severe disturbance is caused by insulation failure on a transmission line. In order to avoid further economical and social costs because of load interruptions, the fault diagnosis has to be concluded as soon as possible. Intelligent systems have been successful in dealing with fault diagnosis problems. This paper proposes the application of complex-domain neural networks for mapping the relationship between electrical signals and fault locations on transmission lines. Complex-domain neural networks allow voltage/current representation without arbitrarily decoupling amplitude and phase. Furthermore, several voltage and current representation schemes, based on electromagnetic transient and steady-state information, are analyzed in this paper. For comparison purpose, these input representations are also tested with real-domain neural networks. The tests consider realistic operating/ fault conditions and assume that fault classification has already been handled.
机译:当传输线的绝缘故障引起严重干扰时,故障定位是一项关键任务。为了避免由于负载中断而造成的进一步经济和社会成本,必须尽快得出故障诊断信息。智能系统已成功解决了故障诊断问题。本文提出了复杂域神经网络在映射电信号和输电线路故障位置之间关系的应用。复杂域神经网络允许电压/电流表示,而无需任意解耦振幅和相位。此外,本文分析了基于电磁暂态和稳态信息的几种电压和电流表示方案。为了进行比较,还使用实域神经网络对这些输入表示进行了测试。该测试考虑了实际的操作/故障条件,并假定已经处理了故障分类。

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