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基于改进小波能熵和支持向量机的短时电能质量扰动识别
引用本文:李庚银,王洪磊,周明. 基于改进小波能熵和支持向量机的短时电能质量扰动识别[J]. 电工技术学报, 2009, 24(4)
作者姓名:李庚银  王洪磊  周明
作者单位:华北电力大学电力系统保护与动态安全监控教育部重点实验室,北京,102206
基金项目:国家自然科学基金,国家重点基础研究发展规划(973计划),高等学校学科创新引智计划 
摘    要:提出了一种基于改进小波能熵和支持向量机(SVM)的短时电能质量扰动识别方法.首先对采样信号进行小波多分辨分解与重构处理,然后引入滑动时间窗算法,从时一频域结合分析的角度,选用高频带的小波系数进行特征提取;提出了改进小波能熵算法,并用此计算相应的熵值作为扰动特征量,将这些特征量作为SVM的输入,实现短时电能质量扰动的辨识.通过原始小波能熵与改进小波能熵的对比,仿真结果表明了改进算法的有效性.

关 键 词:电能质量  扰动识别  改进小波能熵  支持向量机

Short-Time Power Quality Disturbances Identification Based on Improved Wavelet Energy Entropy and SVM
Li Gengyin,Wang Honglei,Zhou Ming. Short-Time Power Quality Disturbances Identification Based on Improved Wavelet Energy Entropy and SVM[J]. Transactions of China Electrotechnical Society, 2009, 24(4)
Authors:Li Gengyin  Wang Honglei  Zhou Ming
Affiliation:Key Laboratory of Power System Protection and Dynamic Security Monitoring and Control under Ministry of Education North China Electric Power University Beijing 102206 China
Abstract:This paper proposes an approach to identify short-time power quality disturbances based on improved wavelet energy entropy and support vector machine(SVM).Firstly,the sampled signals are processed by using the multi-scale wavelet resolution and reconstruction.Then,the sliding time window is introduced into algorithm,combined the time domain analysis with frequency domain analysis.The wavelet coefficients of the high frequency regions are selected for feature extraction.The values of the entropy are then cal...
Keywords:Power quality  disturbance identification  improved wavelet energy entropy  SVM  
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