利用小波变换和支持向量机渗透提取故障信号进行电力系统输电故障分类

Azriyenni Azhari Zakri, Syukri Darmawan, J. Usman, I. Rosma, Boy Ihsan
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引用次数: 5

摘要

输电线路是电力系统将电能从电厂输送到负荷的重要途径。输电线路中经常发生故障短路,并可能导致对负载的供电中断。本文采用离散小波变换(DWT)和支持向量机(SVM)相结合的方法对输电线路故障进行分类。创建DWT以提取瞬态D8和D9(4阶)在50 kHz采样频率的详细信号。使用支持向量机技术,训练和测试数据的均方根(RMS)值将由系数D8和D9确定。利用支持向量机对各相位进行故障检测,在故障类型中发现接地点。利用参数C和核尺度对支持向量机技术进行了运行,取得了较好的故障分类效果。模拟故障的类型随故障位置、故障电阻和初始角度的变化而变化。培训和测试数据为印度尼西亚廖内省的测试系统运行。测试结果对故障的分类准确率达到最高的100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extract Fault Signal via DWT and Penetration of SVM for Fault Classification at Power System Transmission
Power transmission lines are extremely important for the power system to deliver energy of electricity from the plant to the load. The short circuit of fault often occurs in the transmission line and may lead to disconnecting the power supply to the load. This study implements a hybrid technique that is Discrete Wavelet Transformation (DWT) and Support Vector Machine (SVM) for classification of fault in the transmission line. The DWT was created to extract the detailed signal of transient D8 and D9 (order of 4) at 50 kHz for sampling frequency. The value of Root Mean Square (RMS) will be determined by the coefficients D8 and D9 for training and test data using SVM technique. Furthermore, SVM is utilized to detect the fault for each phase and the ground is discovered in the type of fault. The SVM technique has been run using parameter C and kernel scale to achieve the great results of classification of the fault. Type of simulating fault has a variation of location of the fault, fault of resistance and initial angle. The training and test data run for the Test System of Riau, Indonesia. The test result for the classification of fault reaches the highest accuracy of 100%.
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