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基于多重稀疏MobileNetV2的变压器故障诊断方法

刘航 史智予 刘志坚 罗灵琳 李明 牛犇

电机与控制应用2025,Vol.52Issue(5):513-526,14.
电机与控制应用2025,Vol.52Issue(5):513-526,14.DOI:10.12177/emca.2025.026

基于多重稀疏MobileNetV2的变压器故障诊断方法

Transformer Fault Diagnosis Method Based on Multi-Level Sparse MobileNetV2

刘航 1史智予 1刘志坚 1罗灵琳 1李明 1牛犇1

作者信息

  • 1. 昆明理工大学电力工程学院,云南 昆明 650500
  • 折叠

摘要

Abstract

[Objective]Deep learning models are widely used in transformer fault diagnosis due to their ability to learn underlying data patterns and construct hierarchical feature representations.However,their massive number of parameters,complex network topology,and high calculation and storage costs limit their practical application in fault diagnosis of power transformers.[Methods]To address the above issues,this study proposed a transformer fault diagnosis method based on multi-level sparse MobileNetV2.First,spindle-shaped and hourglass-shaped blocks were used to compactly improve the inverted residual blocks of the MobileNetV2 model,reducing parameter number and computational complexity from the model structure itself to achieve preliminary model sparsity.Second,a group-level pruning method based on dependency graph model was proposed.The coupled parameters in the model were grouped,and a group-level pruning optimization strategy based on L2 norm was designed to perform sparse training and pruning fine-tuning.This process removed redundant structures and parameters in the model,further reducing parameter number and computational complexity and enhancing model sparsity.Finally,an 8-bit symmetric uniform quantization and quantization-aware training method was proposed.The 32-bit high-resolution floating-point parameters in the model were quantized into 8-bit low-resolution integer parameters.Building on this,model inference was performed to further reduce the computational complexity and achieve multi-level model sparsity.[Results]The results of numerical experiments and performance evaluations showed that compared with the original MobileNetV2 model,the improved multi-level sparse model proposed in this study achieved a fault identification accuracy of 95.2%,while reducing the parameter number,computational complexity,and model size by approximately 73.5%,96.9%,and 68.8%,respectively.Moreover,the inference time for identifying 1 000 images was only 0.66 seconds.[Conclusion]The proposed method in this study effectively combines three types of individual sparsity methods:compact model improvement,model pruning,and parameter quantization.It achieves multi-level sparsity of deep learning models while maintaining high accuracy,effectively addressing the issue of over-parameterization caused by limited sample data in power transformer fault diagnosis and eliminating its adverse effects.

关键词

变压器/故障诊断/依赖图/组级剪枝/量化感知训练

Key words

transformer/fault diagnosis/dependency graph/group-level pruning/quantization-aware training

分类

信息技术与安全科学

引用本文复制引用

刘航,史智予,刘志坚,罗灵琳,李明,牛犇..基于多重稀疏MobileNetV2的变压器故障诊断方法[J].电机与控制应用,2025,52(5):513-526,14.

基金项目

云南省自然科学基金资助项目(202303AA080002,202401AT070356)Project funded by Natural Science Foundation of Yunnan Province(202303AA080002,202401AT070356) (202303AA080002,202401AT070356)

电机与控制应用

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