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Using Neural Network Techniques for Identification of High-impedance Faults in Distribution Systems

机译:利用神经网络技术识别分配系统中的高阻抗故障

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The objective of the present paper is to present a multi-parametric approach based on artificial neural networks for identification and classification purposes of high-impedance faults in distribution systems. More specifically, the proposed methodology uses artificial neural networks integrated with other several statistical techniques that have also been used in these problem types. Besides providing a modular and robust architecture under the point of view of fault occurrences, the developed intelligent system was implemented using efficient tools dedicated to the preprocessing procedures of voltage and current signals registered from the substation. The global efficiency of the preprocessing tools is guaranteed because part of them accomplishes inferences in the time domain, while the other infer results using the frequency domain. The final results obtained from the application of the proposed system were fully successful, having the same ones tested and validated in distribution feeders from voltage and current signals registered in the substation, which are involved with real fault situation.
机译:本文的目的是基于人工神经网络的多参数方法,用于分配系统中的高阻抗断层的识别和分类目的。更具体地,所提出的方法使用与其他几种统计技术集成的人工神经网络,这些技术也已在这些问题类型中使用。除了在故障发生的角度下提供模块化和强大的架构外,还使用专用于从变电站注册的电压的预处理程序和电流信号的预处理程序来实现开发的智能系统。保证预处理工具的全球效率是保证的,因为它们的一部分在时域中完成推断,而另一个推断使用频域。从拟议系统的应用获得的最终结果完全成功,具有在分配馈线中测试和验证的相同的结果,从存储在变电站中注册的电压和电流信号,这涉及真正的故障情况。

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