Wavelet Based Detection and Classification Power Quality Disturbance using SVM and PSO

Dr. P. Kanirajan
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Abstract

This paper introduces a novel approach to detect and classify power quality disturbance in the power system using Support Vector Machine (SVM). The proposed method requires less number of features as compared to conventional approach for the identification. For the classification, 8 types of disturbances are taken in to account. The classification performance of SVM is compared with Radial basis Function neural network (RBNN).The classification accuracy of the SVM network is improved, just by rewriting the weights and updating the weights with the help of cognitive as well as the social behaviour of particles along with fitness value by using Particle Swarm Optimization (PSO). The simulation results possess significant improvement over existing methods in signal detection and classification with lesser number of features
基于支持向量机和粒子群算法的小波电能质量扰动检测与分类
本文介绍了一种利用支持向量机(SVM)检测和分类电力系统电能质量扰动的新方法。与传统的识别方法相比,所提出的方法需要较少的特征数量。对于分类,考虑了8种类型的干扰。将支持向量机的分类性能与径向基函数神经网络(RBNN)进行了比较。采用粒子群优化(Particle Swarm Optimization, PSO)方法,利用粒子的认知行为和社会行为以及适应度值对SVM网络的权重进行改写和更新,从而提高了SVM网络的分类精度。仿真结果在特征数量较少的情况下,较现有的信号检测和分类方法有了显著的改进
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