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Classification of multiple power quality disturbances based on the improved SVM

机译:基于改进SVM的多功能质量障碍分类

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摘要

To improve classification accuracy of the multiple power quality disturbances, a method is proposed based on the wavelet transform and the particle swarm optimization-support vector machine. Firstly, wavelet transform is applied to extract the wavelet energy difference of multiple power quality disturbances, and the extracted energy difference is used as feature vector. Secondly, particle swarm method is used to optimize the support vector machine to enhance the accuracy of classification. The simulation results indicate that the proposed method is effective to the classification of the seven single power quality disturbances and four multiple power quality disturbances. Compared with the original method, the new method has higher classification accuracy and strong ability to resist noise.
机译:为了提高多功能质量障碍的分类精度,基于小波变换和粒子群优化支持向量机提出了一种方法。首先,应用小波变换以提取多个功率质量扰动的小波能量差,并且提取的能量差被用作特征向量。其次,粒子群方法用于优化支持向量机以增强分类的准确性。仿真结果表明,该方法对七种单功率质量障碍和四种多功能质量扰动的分类是有效的。与原始方法相比,新方法具有更高的分类精度和强大的抵抗噪声的能力。

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