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Fault Analysis of High-Voltage Circuit Breakers Based on Coil Current and Contact Travel Waveforms Through Modified SVM Classifier

机译:基于线圈电流和接触行程波形的改进型SVM分类器高压断路器故障分析

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High-voltage circuit breakers (HVCBs) play a substantial protection role in power networks. The reliable operation of these critical components leads to an increment of resiliency and safety of power systems. It is essential to design a fault diagnostic system that detects the defects in preliminary levels and identify the origins to establish a precise maintenance task. This paper focuses on coil current and contact travel waveforms as significant signals that bear helpful information about the fault occurrence for a typical EDF, 72.5 kV, SF6 HVCB. Healthy and faulty signals simulated based on Michael Stanek's HVCB model in MATLAB, with performing some modifications in the actuating coil and operating mechanism. In the first step, to arrange an efficient fault recognition system, neural network and support vector machine (SVM) have been designed using the information of 475 simulated healthy and faulty HVCBs and verified for 200 new samples. In the second step, to improve the classification results, an additional distinction algorithm has been recommended for the cases in which two failure modes are detected by the classifier. Since any failure mode's impact on the selected features is different, the proposed diagnostic method makes a decision, between two classes of faults, based on the extracted pattern of each failure mode. The recommended method, which is a combination of commonly used classification techniques and the defined algorithm, leads to the more accurate diagnosis.
机译:高压断路器(HVCB)在电力网络中起着重要的保护作用。这些关键组件的可靠运行导致电力系统的弹性和安全性的提高。设计故障诊断系统是至关重要的,该系统可以在初期阶段检测出缺陷并确定来源,以建立精确的维护任务。本文将重点放在作为重要信号的线圈电流和触点行进波形上,这些信号包含有关典型EDF,72.5 kV,SF6 HVCB故障发生的有用信息。在MATLAB中根据Michael Stanek的HVCB模型对健康和故障信号进行了仿真,并对执行线圈和操作机构进行了一些修改。第一步,要布置一个有效的故障识别系统,已使用475个模拟的健康和故障HVCB的信息设计了神经网络和支持向量机(SVM),并验证了200个新样本。在第二步中,为了改善分类结果,对于分类器检测到两种故障模式的情况,建议了一种额外的区分算法。由于任何故障模式对所选功能的影响都是不同的,因此建议的诊断方法将基于每种故障模式的提取模式在两类故障之间做出决策。推荐的方法结合了常用的分类技术和定义的算法,可以使诊断更加准确。

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