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Detection of serial arc fault on low-voltage indoor power lines by using radial basis function neural network

机译:基于径向基函数神经网络的低压室内电力线串联电弧故障检测

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摘要

Dangerous serial electric arc faults on low voltage power lines must be detected before fire hazards occur. The detection technology is requested to have high accuracy. However, the characteristics of line current waveform during serial arc faults are complicated. This paper uses the approach of a radial basis function neural network (DRBFNN) to identify the occurrence of serial arc faults. At first, the discrete wavelet transform (DWT) is employed to obtain the time frequency domain characteristics of line current waveforms to reflect the serial arc fault patterns. Then some measured data are used to train the DRBFNN. Finally, this study compares the detection results under different loading conditions and operation conditions. It also compares the detection results with other two methods, detection of sub-spectrum energy (DSE) and high frequency detection by wavelet transform (HFDWT). It can be observed that DRBFNN has better ability than DSE and HFDWT to detect serial arc faults. (C) 2016 Published by Elsevier Ltd.
机译:在发生火灾隐患之前,必须先检测低压电源线上的危险串联电弧故障。要求检测技术具有高精度。但是,串行电弧故障期间的线电流波形的特性复杂。本文使用径向基函数神经网络(DRBFNN)的方法来识别串行电弧故障的发生。首先,采用离散小波变换(DWT)获得线电流波形的时频域特征,以反映串行电弧故障模式。然后,使用一些测量数据来训练DRBFNN。最后,本研究比较了不同负载条件和操作条件下的检测结果。它还将检测结果与其他两种方法进行了比较,亚谱能量检测(DSE)和小波变换高频检测(HFDWT)。可以看出,DRBFNN具有比DSE和HFDWT更好的检测串行电弧故障的能力。 (C)2016由Elsevier Ltd.出版

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