小波特征在噪声环境下电能质量扰动分类中的有效性

M. Markovska, D. Taskovski
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引用次数: 10

摘要

电能质量扰动分类是保证电网高质量供电的重要内容。分类中的一个主要问题是如何从大量的PQ数据中提取“正确”的特征。进行特征选择的目的不仅是为了提高分类精度,同时也是为了减少分类算法的计算时间。因此,在本工作中,我们研究了基于小波的特征对分类精度的有效性,以实现最优的特征提取方法。在纯PQ信号和伴随高斯白噪声的PQ信号的情况下,使用三种不同的分类器进行了调查。结果表明,给定特征的有效性不是一般的,而是取决于与它一起使用的其他特征的类型以及信号中存在的噪声水平。
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The effectiveness of wavelet based features on power quality disturbances classification in noisy environment
Power quality (PQ) disturbances classification plays an essential role in ensuring high quality power supply of the power grid. One of the main issues in classification is how to extract the “right” features from massive amount of PQ data. The feature selection should be performed for the aim of not only increasing the classification accuracy, but in the same time reducing the calculation time of the classification algorithm. Accordingly, in this work we investigate the effectiveness of the wavelet based features on the classification accuracy in order to perform optimal feature extraction method. The investigation is made using three different classifiers, in case of pure PQ signals and PQ signals accompanied with white Gaussian noise. The results show that the effectiveness of a given feature is not general, but it depends on the kind of the other features it is used with and the noise level present in the signal.
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