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基于深度学习的冲击电压老炼过程中真空击穿机制甄别优化方法

李世民 徐勋晨 张潮海

电工技术学报2024,Vol.39Issue(13):4153-4163,11.
电工技术学报2024,Vol.39Issue(13):4153-4163,11.DOI:10.19595/j.cnki.1000-6753.tces.230617

基于深度学习的冲击电压老炼过程中真空击穿机制甄别优化方法

Optimization Method for Classifying Breakdown Mechanism During Impulse Voltage Conditioning Process Based on Deep Learning

李世民 1徐勋晨 1张潮海1

作者信息

  • 1. 南京航空航天大学多电飞机电气系统工信部重点实验室 南京 210016
  • 折叠

摘要

Abstract

Impulse voltage conditioning technology is an effective means to improve the insulation ability of vacuum circuit breaker(VCB).Classifying the breakdown mechanism quickly and accurately has a great significance to reveal the physical evolution of impulse voltage conditioning and improve the VCB withstanding voltage level.The traditional method to classify the breakdown mechanism needs to eliminate the displacement current through mathematical compensation algorithm and fit the Fowler-Nordheim formula,which is complicated to obtain the breakdown mechanism.Deep learning has an obvious advantage in image recognition and feature extraction.In this paper,an optimized method to classify the breakdown mechanism was proposed through enlarging the pre-breakdown period in breakdown waveform based on deep learning. Five identical sphere oxygen-free copper electrode pairs A,B,C,D and E were applied the same impulse conditioning.All the breakdown waveforms were processed into two kinds:0~400 μs,containing the whole breakdown waveform,and 0~200 μs,pre-breakdown period enlarged breakdown waveform.The corresponding breakdown mechanisms of A and B were labeled as pulsed current induced vacuum breakdown(PB),field emission induced breakdown(FEBD)and particle induced vacuum breakdown(PBD)through the traditional method.Then,breakdown waveforms of A and B(1 530)in 0~400 μs and 0~200 μs were for the breakdown mechanism classification training,and breakdown waveforms of C,D and E(1 398)in 0~400 μs and 0~200 μs were for breakdown mechanism classification test,respectively.The corresponding breakdown mechanisms of C,D and E were classified into PB,FEBD and PBD with deep learning.In addition,the breakdown mechanisms of C,D and E were also obtained through the traditional method.The deep learning outputs were compared with that through the traditional method.The test results were evaluated and analyzed by the evaluation parameters such as precision,recall,Fl-score and so on. The results showed that the breakdown mechanism classification accuracies of C,D and E(0~200 μs)were 88.92%,87.99%and 92.78%,respectively,and all the accuracies of 0~200 μs were higher than 87.99%.The breakdown mechanism classification accuracies of C,D and E(0~400 μs)were 85.23%,84.90%and 91.90%,respectively.Compared with 0~400 μs,the breakdown mechanism classification accuracies of 0~200 μs were improved by 3.69%,3.09%and 0.88%,respectively.The accuracy of 0~200 μs had an average improvement by 2.55%than that of 0~400 μs.Precision,recall and Fl-score of 0~200 μs were also higher than those of 0~400 μs.The results showed that 0~200 μs,pre-breakdown period enlarged breakdown waveform had a better performance in breakdown mechanism classification. Conclusions were drawn as following:(1)The classification accuracy for breakdown mechanism through deep learning could be improved by enlarging the pre-breakdown period in the breakdown waveform.(2)The breakdown mechanism classification can be completed quickly and accurately,whose accuracy could be higher than 87.99%with the effectiveness verified by precision,recall and Fl-score.It has a theoretical guidance for a promising conditioning technology to improve the VCB voltage level in industry application.

关键词

冲击电压老炼/击穿机制/深度学习/突显击穿前过程/击穿波形

Key words

Impulse voltage conditioning/breakdown mechanism/deep learning/pre-breakdown period enlarged/breakdown waveform

分类

信息技术与安全科学

引用本文复制引用

李世民,徐勋晨,张潮海..基于深度学习的冲击电压老炼过程中真空击穿机制甄别优化方法[J].电工技术学报,2024,39(13):4153-4163,11.

基金项目

国家自然科学基金(52207162)、江苏省自然科学基金(BK20210307)和中央高校基本科研业务费专项资金(NJ2023012,NJ2023014)资助项目. (52207162)

电工技术学报

OA北大核心CSTPCD

1000-6753

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