基于Hilbert-Huang变换和神经网络的配电网故障诊断

Khalid A. Alshumayri, M. Shafiullah
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引用次数: 2

摘要

配电网故障会造成电力中断和经济损失。有效地诊断故障,加快电力恢复,是配电网保护系统的重要组成部分。提出了一种由Hilbert-Huang变换(HHT)和前馈神经网络(FFNN)相结合的配电网故障诊断方法。首先,从HHT得到瞬时幅值(IA)和频率(IF)。然后,从IA和IF图中提取统计特征,并将其提取到FFNN中,用于不同类型故障的检测、分类和定位识别。在MATLAB/SIMULINK平台上对该方法进行了仿真验证。结果表明,该方法对无噪声和有噪声数据均具有较好的处理效果,且故障前加载条件、故障电阻、位置和起始角等参数均具有较好的处理效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distribution Grid Fault Diagnostic Employing Hilbert-Huang Transform and Neural Networks
Faults in distribution grids cause power interruption and economic losses. A crucial part of distribution grids protection systems is effectively diagnosing the fault to accelerate the power restoration process. This paper presents a fault diagnostic method for a distribution grid that consists of the Hilbert-Huang transform (HHT) and feedforward neural networks (FFNN). First, instantaneous amplitude (IA) and frequency (IF) are obtained from the HHT. Subsequently, statistical features are extracted from IA and IF plots and fetched to the FFNN for detection, classification, and location identification of different types of faults. The proposed approach is tested on a distribution grid modeled in MATLAB/SIMULINK platform. Obtained results demonstrate the effectiveness of the developed method for both noise-free and noisy data with the variation of pre-fault loading conditions, fault resistance, location, and inception angle.
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