引用本文:伊慧娟,高云鹏,朱彦卿,黄瑞,黄纯.基于自适应不完全S变换与LOO-KELM算法的复合电能质量扰动识别[J].电力自动化设备,2022,42(1):
YI Huijuan,GAO Yunpeng,ZHU Yanqing,HUANG Rui,HUANG Chun.Recognition of composite power quality disturbance based on improved incomplete S transform and LOO-KELM algorithm[J].Electric Power Automation Equipment,2022,42(1):
【打印本页】   【HTML】   【下载PDF全文】   查看/发表评论  【EndNote】   【RefMan】   【BibTex】
←前一篇|后一篇→ 过刊浏览    高级检索
本文已被:浏览 9830次   下载 1911  
基于自适应不完全S变换与LOO-KELM算法的复合电能质量扰动识别
伊慧娟1, 高云鹏1,2, 朱彦卿1, 黄瑞1,2,3, 黄纯1
1.湖南大学 电气与信息工程学院,湖南 长沙 410082;2.智能电气量测与应用技术湖南省重点实验室,湖南 长沙 410004;3.国网湖南省电力有限公司,湖南 长沙 410004
摘要:
针对电能质量复合扰动识别中特征提取效率低、分类器识别能力与学习速度无法同步提高的问题,提出一种基于自适应窗不完全S变换与留一交叉验证优化的核极限学习机(LOO-KELM)算法的复合电能质量扰动识别方法。首先根据选定的主频率点自适应调节S变换窗宽系数,提取具有高时频分辨率的59种电能质量(PQ)特征,再通过留一交叉验证寻找最小预测残差平方和,实现核极限学习机的输出权重优化,最后根据提取PQ特征集与优化后的核极限学习机实现复合扰动的识别与分类。仿真和实测结果表明,所提方法对不同噪声下的16类混合电能质量扰动均具有较高的分类精度,相较于现有复合电能质量识别方法,分类精度更高且训练时间更短。
关键词:  电能质量  复合扰动识别  自适应窗不完全S变换  核极限学习机  留一交叉验证
DOI:10.16081/j.epae.202108012
分类号:TM71
基金项目:国家自然科学基金资助项目(51777061);长沙市重点研发计划项目(kq1901029);国家重点实验室开放基金研究项目(BGRIMM-KZSKL-2020-09)
Recognition of composite power quality disturbance based on improved incomplete S transform and LOO-KELM algorithm
YI Huijuan1, GAO Yunpeng1,2, ZHU Yanqing1, HUANG Rui1,2,3, HUANG Chun1
1.College of Electrical and Information Engineering, Hunan University, Changsha 410082, China;2.Hunan Province Key Laboratory of Intelligent Electrical Measurement and Application Technology, Changsha 410004, China;3.State Grid Hunan Electric Power Company Limited, Changsha 410004, China
Abstract:
In order to solve the problems of low efficiency of feature extraction, and inability of classifier recognition and learning speed in composite power quality disturbance classification, a composite power quality disturbance recognition method based on incomplete S transformation of adaptive window and LOO-KELM(Kernel Extreme Learning Machine optimized by Leave-One-Out cross validation) algorithm is proposed. Firstly, the window width coefficient of S transform is adaptively adjusted according to the selected main frequency, 59 kinds of PQ(Power Quality) characteristics with high time-frequency resolution are extracted. Then through LOO, the minimum prediction residual sum of squares is obtained for the kernel extreme learning machine output weight optimization. According to the extraction of PQ feature set and the optimized kernel extreme learning machine, the identification and classification of compound disturbance are realized. Results of simulation and measurement show that the proposed method has higher classification accuracy for 16 types of mixed power quality disturbances under different noises. Compared with the existing composite power quality identification methods, the proposed method has higher classification accuracy and shorter training time.
Key words:  power quality  composite disturbance classification  incomplete S transformation of adaptive window  kernel extreme learning machine  leave-one-out cross validation

用微信扫一扫

用微信扫一扫