引用本文:张明龙,张振宇,罗 翔,等.基于多核支持向量机的混合扰动波形辨识算法研究[J].电力系统保护与控制,2022,50(15):43-49.
ZHANG Minglong,ZHANG Zhenyu,LUO Xiang,et al.Complex disturbance waveform recognition based on a multi-kernel support vector machine[J].Power System Protection and Control,2022,50(15):43-49
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基于多核支持向量机的混合扰动波形辨识算法研究
张明龙1,张振宇1,罗 翔1,高 源1,李宽宏2,朱 珂3
1.国网福建省电力有限公司电力科学研究院,福建 福州 350007;2.国网福建省电力有限公司福州供电公司, 福建 福州 350009;3.山东大学电气工程学院,山东 济南 250061
摘要:
针对特征提取手段自身局限性导致的扰动典型特征间边缘重叠对混和扰动辨识的影响,提出一种基于多域特征优选的多核支持向量机辨识算法。首先,利用多种特征提取手段获取混和扰动多域典型特征。其次,为考虑高维特征与目标类别的相关性和度量尺度的规范化,利用改进的最大相关最小冗余准则优选用于辨识的关键特征子集,进而利用计及半径信息的多核SVM来辨识混合扰动波形。仿真结果表明,所提辨识算法能够克服混合扰动特征空间模糊对辨识精度的影响,受噪声影响小,稳定性好。
关键词:  混合扰动  多域  多核支持向量机  边缘重叠  配电网
DOI:DOI: 10.19783/j.cnki.pspc.211372
分类号:
基金项目:国家电网有限公司总部科技项目资助“基于物联网技术的配电开关一二次深度融合与精益运维关键技术研究及应用”(52130421000S)
Complex disturbance waveform recognition based on a multi-kernel support vector machine
ZHANG Minglong1, ZHANG Zhenyu1, LUO Xiang1, GAO Yuan1, LI Kuanhong2, ZHU Ke3
1. Electrical Power Research Institute, State Grid Fujian Electric Power Co., Ltd., Fuzhou 350007, China; 2. Fuzhou Power Supply Company, State Grid Fujian Electric Power Co., Ltd., Fuzhou 350009, China; 3. School of Electrical Engineering, Shandong University, Jinan 250061, China
Abstract:
There is influence of edge overlap among disturbed typical features on complex disturbance identification due to the limitations of feature extraction methods. Thus a multi-kernel support vector machine identification algorithm based on multi-domain feature optimization is proposed. First, a variety of feature extraction methods are used to obtain the complex perturbation multi-domain typical features. Secondly, in order to consider the correlation between high-dimensional features and target categories and the normalization of the measurement scale, an improved maximum correlation minimum redundancy criterion is used to select the key feature subset for identification, and then the multi-kernel SVM with radius information is used to identify the complex disturbance waveform. The simulation results show that the proposed algorithm can overcome the influence of spatial ambiguity of complex disturbance on identification accuracy, is less affected by noise and has good stability. This work is supported by the Science and Technology Project of the Headquarters of the State Grid Corporation of China (No. 52130421000S).
Key words:  complex disturbance  multi-domain  multi-kernel support vector machine  edge overlap  distribution network
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