谢国民,王嘉良.基于混合采样与 IHBA-SVM 的变压器故障辨识方法[J].电子测量与仪器学报,2022,36(12):77-85
基于混合采样与 IHBA-SVM 的变压器故障辨识方法
Transformer fault identification method based on hybridsampling and IHBA-SVM
  
DOI:
中文关键词:  变压器  故障诊断  改进蜜獾算法  平衡数据集  混合采样
英文关键词:transformer  fault diagnosis  improved honey badger algorithm  balanced data set  hybrid sampling
基金项目:国家自然科学基金(51974151)、辽宁省教育厅重点实验室(LJZS003)项目资助
作者单位
谢国民 1.辽宁工程技术大学电气与控制工程学院 
王嘉良 1.辽宁工程技术大学电气与控制工程学院 
AuthorInstitution
Xie Guomin 1.Faculty of Electrical and Control Engineering, Liaoning Technical University 
Wang Jialiang 1.Faculty of Electrical and Control Engineering, Liaoning Technical University 
摘要点击次数: 763
全文下载次数: 725
中文摘要:
      针对变压器故障数据的不平衡性弱化故障分类能力的问题,提出混合采样与改进蜜獾算法( IHBA)优化支持向量机 (SVM)的变压器故障诊断方法。 首先采用 K 近邻去噪、K 均值聚类(K-means)与合成少数类过采样(SMOTE)对数据进行混合 采样处理,以缓解诊断结果向多数类的偏移;然后使用 Tent 映射、轮盘赌随机搜索机制和最优个体扰动策略对传统蜜獾算法 (HBA)进行改进,并使用 IHBA 优化 SVM 参数,以进一步提升变压器故障辨识能力;最后对所提方法进行算例仿真,结果显示, 相较于传统的变压器故障辨识方法,采用 K 近邻去噪、K-means、SMOTE 混合采样与 IHBA-SVM 相结合的故障诊断模型获得了 最高的宏 F1 和微 F1 值,分别达到 0. 877 和 0. 886,表明提出模型不仅具有更高的整体分类能力,且更能兼顾对少数类故障的 辨识。
英文摘要:
      Aiming at the problem that the unbalance of transformer fault data weakens the ability of fault classification, a transformer fault diagnosis method based on hybrid sampling and improved honey badger algorithm ( IHBA) and optimized support vector machine (SVM) is proposed. Firstly, K-nearest neighbor denoising, K-means and SMOTE are used for hybrid sampling of data to alleviate the shift of diagnosis results to the majority class. Then, the traditional honey badger algorithm (HBA) is improved by using tent mapping, roulette random search mechanism and optimal individual perturbation strategy, and the SVM parameters are optimized by IHBA to further improve the transformer fault identification ability. Finally, the simulation results of the proposed method show that, compared with the traditional transformer fault identification method, the fault diagnosis model combining K-Nearest Neighbor denoising, K-means, SMOTE hybrid sampling and IHBA-SVM obtains the highest macro F1 and micro F1 values, reaching 0. 877 and 0. 886 respectively, which indicates that the proposed model not only has higher overall classification ability, but also can better identify minority faults.
查看全文  查看/发表评论  下载PDF阅读器