Study of a new method for power system transients classification based on wavelet entropy and neural network |
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Authors: | He ZhengyouAuthor Vitae Gao ShibinAuthor VitaeChen XiaoqinAuthor Vitae Zhang JunAuthor VitaeBo ZhiqianAuthor Vitae Qian QingquanAuthor Vitae |
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Affiliation: | a Department of Electrical Engineering, Southwest Jiaotong University, Chengdu, SC 610031, China b AREVA T&D - Automation and Information System, Manchester, UK |
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Abstract: | The detection and classification of transient signals are widely applied in many fields of power system. The study of transient signal detection and classification is a sustaining focus of researchers as well as a difficult issue. There are still many problems needed to be solved in this area. Based on the wavelet transform (WT), the idea of entropy and weight coefficient is introduced, and the wavelet energy entropy (WEE) and wavelet entropy weight (WEW) are defined in this paper. The distribution picture of WEE and WEW along with scales are presented for the first time. PSCAD/EMTDC models for six types of transients, namely breaker switching, capacitor switching, short circuit fault, primary arc, lightning disturbance and lightning strike fault, are constructed. With WEE and WEW, the eigenvectors for the six transients are established and a model which uses the eigenvectors as the input of the BP (back-propagation) neural network is set up to realize the classification of these transients. The simulation has been executed based on a 500 kV transmission line model in China and the results show that feature extraction based on WEE and WEW can effectively discover the useful local features. With the help of neural network classifier, it has effective classifying result. This method is applicable in the power system. |
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Keywords: | Power system transient Wavelet analysis Entropy weight Artificial neural network WEE WEW |
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