A novel algorithm for power fault diagnosis based on wavelet entropy and D-S evidence theory

Fu Ling, He Zheng-you, Bo Zhiqian
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Abstract

Fast and accurate fault diagnosis is the primary prerequisite for separating the faulty devices and restoring the power supply, therefore it is of great importance to develop an advanced diagnosis method to meet the power system requirements. With the perspective of information fusion, this paper proposes a novel algorithm for fault diagnosis in power system via the fusion of several different wavelet entropies. Wavelet entropy can extract the fault characteristic quickly and accurately because it combines together the advantages of Wavelet Transform and Shannon Entropy; however in some conditions it is not easy to reach a satisfying result with single wavelet because of the uncertainty and diversity of faults. Therefore, several different wavelet entropies are fused by the D-S evidence theory and the basic probability assignment is set up by a weighted average method based on norm, then a decision method based on the basic probability number is used to diagnose the faults. Simulations with EMTDC and MATLAB demonstrate that this diagnosis method can increase the supporting rate of faults and improve the accuracy and the real-time performance of fault diagnosis in power system. Results also show that the proposed algorithm is feasible and reliable for fault diagnosis.
基于小波熵和D-S证据理论的电力故障诊断新算法
快速准确的故障诊断是分离故障设备和恢复供电的首要前提,因此开发一种先进的诊断方法以满足电力系统的要求具有重要意义。从信息融合的角度出发,提出了一种基于不同小波熵融合的电力系统故障诊断新算法。小波熵结合了小波变换和香农熵的优点,可以快速准确地提取故障特征;但在某些情况下,由于故障的不确定性和多样性,单小波分析并不容易得到满意的结果。为此,采用D-S证据理论融合多个不同的小波熵,采用基于范数的加权平均方法建立基本概率赋值,然后采用基于基本概率数的决策方法进行故障诊断。EMTDC和MATLAB仿真结果表明,该诊断方法可以提高故障的支持率,提高故障诊断的准确性和实时性。结果表明,该算法在故障诊断中是可行和可靠的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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