RBFNN Based Power Quality Issues Detection and Classification using Wavelet-PSO

P. Kanirajan
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Abstract

This paper introduces a new approach to detect and classify power quality disturbances in the power system using Radial Basis Function Neural Networks (RBFNN) trained by Particle Swarm Optimization (PSO).Back Propagation (BP) algorithm is the most frequently used for training, but it suffers from extensive computation and also convergence speed is relatively slow. Feature mined through the wavelet is used for training. After training, the weight obtained is used to classify the power quality issues. For classification, 8 types of disturbance are taken in to explanation. The classification performance of RBFNN trained PSO algorithm is matched with BP algorithm. The simulation result using PSO have significant improvement over BP methods in signal detection and classification.
基于小波粒子群算法的RBFNN电能质量问题检测与分类
介绍了一种利用粒子群算法训练的径向基函数神经网络(RBFNN)检测和分类电力系统电能质量扰动的新方法。BP算法是最常用的训练算法,但其计算量大,收敛速度慢。通过小波挖掘的特征用于训练。训练后,得到的权值用于对电能质量问题进行分类。为了进行分类,我们采用了8种类型的干扰进行解释。RBFNN训练后的粒子群算法的分类性能与BP算法相当。仿真结果表明,粒子群算法在信号检测和分类方面比BP算法有明显改善。
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