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Statistical Feature Extraction for Fault Locations in Nonintrusive Fault Detection of Low Voltage Distribution Systems

机译:低压配电系统非侵入式故障检测中故障位置的统计特征提取

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This paper proposes statistical feature extraction methods combined with artificial intelligence (AI) approaches for fault locations in non-intrusive single-line-to-ground fault (SLGF) detection of low voltage distribution systems. The input features of the AI algorithms are extracted using statistical moment transformation for reducing the dimensions of the power signature inputs measured by using non-intrusive fault monitoring (NIFM) techniques. The data required to develop the network are generated by simulating SLGF using the Electromagnetic Transient Program (EMTP) in a test system. To enhance the identification accuracy, these features after normalization are given to AI algorithms for presenting and evaluating in this paper. Different AI techniques are then utilized to compare which identification algorithms are suitable to diagnose the SLGF for various power signatures in a NIFM system. The simulation results show that the proposed method is effective and can identify the fault locations by using non-intrusive monitoring techniques for low voltage distribution systems.
机译:本文提出了统计特征提取方法与人工智能(AI)方法相结合的方法,用于低压配电系统的非侵入式单线对地故障(SLGF)检测中的故障定位。使用统计矩变换提取AI算法的输入特征,以减小通过使用非侵入式故障监视(NIFM)技术测得的功率签名输入的尺寸。开发网络所需的数据是通过在测试系统中使用电磁暂态程序(EMTP)模拟SLGF生成的。为了提高识别精度,本文将归一化后的这些特征提供给AI算法进行展示和评估。然后利用不同的AI技术来比较哪些识别算法适合于诊断NIFM系统中各种功率特征的SLGF。仿真结果表明,该方法是有效的,并且可以通过使用非侵入式监测技术对低压配电系统进行故障定位。

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