引用本文:马佳琪,王丰华,盛戈皞,钱勇,张建磊,王峰,刘永.基于同步挤压变换和深度迁移学习的GIS隔离开关故障诊断[J].电力自动化设备,2024,44(2):218-224.
MA Jiaqi,WANG Fenghua,SHENG Gehao,QIAN Yong,ZHANG Jianlei,WANG Feng,LIU Yong.Fault diagnosis of GIS disconnector based on synchrosqueezing transform and deep transfer learning[J].Electric Power Automation Equipment,2024,44(2):218-224.
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基于同步挤压变换和深度迁移学习的GIS隔离开关故障诊断
马佳琪1, 王丰华1, 盛戈皞1, 钱勇1, 张建磊2, 王峰2, 刘永2
1.上海交通大学 电气工程系,上海 200240;2.山东泰开高压开关有限公司,山东 泰安 271000
摘要:
为实现气体绝缘组合电器(GIS)隔离开关机械故障的智能诊断,基于GIS隔离开关分合闸过程中的振动信号,提出了基于深度迁移学习的GIS隔离开关机械故障诊断方法。首先应用二阶同步挤压傅里叶变换(FSST2)获取GIS隔离开关振动信号的时频分布,然后基于深度迁移学习的思想构建预训练模型并进行优化,建立了GIS隔离开关机械故障智能诊断模型。对某GR角型GIS隔离开关正常和典型机械故障状态下的振动信号的分析结果表明,基于FSST2得到的GIS隔离开关振动信号时频表示具有较好的能量聚集性,所建立的GIS隔离开关机械故障智能诊断模型识别准确率高且模型复杂度低,可用于GIS隔离开关机械故障的高效诊断。
关键词:  GIS隔离开关  故障诊断  同步挤压变换  时频分布  深度迁移学习
DOI:10.16081/j.epae.202304019
分类号:
基金项目:国家重点研发计划项目(2020YFB1709701)
Fault diagnosis of GIS disconnector based on synchrosqueezing transform and deep transfer learning
MA Jiaqi1, WANG Fenghua1, SHENG Gehao1, QIAN Yong1, ZHANG Jianlei2, WANG Feng2, LIU Yong2
1.Department of Electrical Engineering, Shanghai Jiao Tong University, Shanghai 200240, China;2.Shandong Taikai High Voltage Switchgear Co.,Ltd.,Tai’an 271000, China
Abstract:
To recognize the typical mechanical faults of gas insulation switchgear(GIS) disconnector with high efficiency, a deep transfer learning-based mechanical fault diagnosis model on the basis of the vibration signals of GIS disconnector in the opening and closing operation is proposed. The second-order short-time Fourier transform-based synchrosqueezing transform(FSST2) is applied to obtain the time-frequency distribution of the vibration signals of GIS disconnector. Then with the thought of deep transfer learning, the pre-trained model is built and optimized. A deep transfer learning-based mechanical fault intelligent diagnosis model of GIS disconnector is proposed. The analysis results of vibration signals of a GR angle-type GIS disconnector under normal and typical mechanical fault conditions show that the time-frequency representation of vibration signals of GIS disconnector has better energy aggregation. The proposed mechanical fault intelligence diagnosis model is capable of recognizing the different mechanical faults with a high recognition rate and has a low model construction complexity, and can be used to efficiently diagnose the mechanical fault of GIS disconnector.
Key words:  GIS disconnector  fault diagnosis  synchrosqueezing transform  time-frequency distribution  deep transfer learning

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