Research on power quality disturbance automatic recognition and location

Li Geng-yin, Z. Ming, Zhang Zhiyuan
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引用次数: 6

Abstract

A novel approach on power quality disturbance automatic recognition and location is presented in this paper. At first the DB4 wavelet is applied to decompose the signals containing disturbances, and to extract the feature vectors by wavelet coefficients at all scales according to Euclid distance measurement. Then disturbance types are recognized through the pattern recognition classifier based on neural network and genetic algorithm. Referred to the principle of differential protection in bus and line protections, the disturbance energy is defined as the characteristic, and disturbance location is solved by comparing the direction of disturbance energy and topology relation of related measurement points. The software system realizing above recognition and location of disturbances is developed for testing the approach. Numerical results show that the proposed approach is correct and effective.
电能质量干扰自动识别与定位的研究
提出了一种电能质量干扰自动识别与定位的新方法。首先利用DB4小波对含有干扰的信号进行分解,并根据欧几里得距离测量,利用小波系数提取各尺度的特征向量。然后通过基于神经网络和遗传算法的模式识别分类器对扰动类型进行识别。参考母线保护和线路保护中的差动保护原理,将扰动能量定义为特征,通过比较扰动能量方向和相关测点的拓扑关系来求解扰动定位。为验证该方法,开发了实现上述干扰识别和定位的软件系统。数值结果表明,该方法是正确有效的。
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