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Variance based offline Power Disturbance Signal Classification using Support Vector Machine and Random Kitchen Sink

机译:基于方差的离线电源干扰信号分类使用支持向量机和随机厨房水槽

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In this paper, five classes of different power quality disturbances such as swell, sag, harmonics, sag with harmonics and swell with harmonics are synthesized using MATLAB/SIMULINK software which is further decomposed into 8 intrinsic mode functions using variational mode decomposition (VMD). VMD is an adaptive signal processing method that decomposes the signal in to several intrinsic mode functions (IMF) or components. The variance calculated from each of the mode is taken as feature representation. It is found that sines and cosines of variance vector of eight different IMF candidates of a signal acts as feature vector that can accurately extract salient and unique nature of the power disturbances. The classification is performed using Support Vector Machines (SVM) and Random Kitchen Sink (RKS) algorithm. The classification results in a highest accuracy of 94.44% for RKS method when compared to SVM.
机译:在本文中,使用MATLAB / Simulink软件合成了五种不同的电源质量扰动,如膨胀,下垂,谐波,带有谐波的谐波和膨胀,其使用变分模式分解(VMD)进一步分解为8个内在模式函数。 VMD是一种自适应信号处理方法,将信号分解为多个内在模式功能(IMF)或组件。从每个模式计算的方差被视为特征表示。结果发现,信号的八种不同IMF候选的差异矢量的阳瓣和余弦作为特征载体,可以准确地提取功率干扰的突出性和独特性。使用支持向量机(SVM)和随机厨房水槽(RKS)算法进行分类。与SVM相比,该分类的最高精度为RKS方法为94.44%。

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