基于s变换的模块化神经网络对电压跌落、膨胀和谐波进行分类

C. Venkatesh, D. Siva Sarma, M. Sydulu
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引用次数: 18

摘要

本文采用s变换分析和模块化神经网络相结合的方法,对典型的电压扰动——暂降、膨胀、中断和谐波进行了分类和表征。s变换具有优异的时频分辨率特性,即使在噪声存在的情况下也能正确检测出干扰,因此可以用于提取干扰信号的各种特征。利用s变换提取特征的模块化神经网络进行分类。模块化神经网络是将传统多层神经网络的结构修改为针对不同扰动的模块,以减少训练周期和提高分类能力。利用s变换分析对扰动进行幅度和相位信息表征。仿真和实验结果表明,s变换与模块化神经网络相结合可以有效地检测、分类和表征干扰。
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Classification of voltage sag, swell and harmonics using S-transform based modular neural network
This paper presents classification and characterization of typical voltage disturbances- sag, swell, interruption and harmonics employing S-transform analysis combined with modular neural network. S-transform is used to extract various features of disturbance signal as it has excellent time-frequency resolution characteristics and ability to detect disturbance correctly even in the presence of noise. Classification is performed using modular neural network with features extracted from S-transform. Modular neural network is designed by modifying the structure of traditional multilayer network into modules for each disturbance to provide less training period and better classification. Disturbances are characterized by magnitude and phase information using S-transform analysis. Simulation and experimental results show that S-transform combined with Modular neural network can effectively detect, classify and characterize the disturbances.
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