基于双知识蒸馏的两阶段边缘故障诊断方法

IF 1.7
Yang Yang, Yuhan Long, Yijing Lin, Zhipeng Gao, Lanlan Rui, Peng Yu
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引用次数: 0

摘要

随着物联网(IoT)的快速发展,边缘设备的自动化已成为一个重要趋势。现有的故障诊断方法具有计算和存储负荷大的特点,且大多具有计算冗余,不适合部署在资源和能力有限的边缘设备上。提出了一种基于双知识精馏的两阶段边缘故障诊断方法。首先,我们提出了一种基于聚类的自知识蒸馏方法(Cluster KD),该方法将样本诊断结果的平均值作为聚类,并将聚类结果作为损失函数的项。它利用相同类型的故障之间的相关性来提高教师模型的准确性,特别是对于相似度高的故障类别。然后,双知识蒸馏框架使用普通知识蒸馏构建轻量级的边缘部署模型。提出了一种两阶段边侧故障诊断方法(TSM),该方法将故障检测和故障诊断分离为不同的阶段:第一阶段采用基于去噪自编码器(DAE)的故障检测模型,实现快速故障响应;第二阶段,采用方差加权多元卷积模型(DCMVW)对故障进行详细诊断,从微观和宏观两个角度提取特征;通过在两个故障数据集上的对比实验,证明了该方法具有准确率高、时延低、计算量小等优点,适用于智能边侧故障诊断。实验结果表明,该方法训练过程平稳,平衡性好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two-Stage Edge-Side Fault Diagnosis Method Based on Double Knowledge Distillation
With the rapid development of the Internet of Things (IoT), the automation of edge-side equipment has emerged as a significant trend. The existing fault diagnosis methods have the characteristics of heavy computing and storage load, and most of them have computational redundancy, which is not suitable for deployment on edge devices with limited resources and capabilities. This paper proposes a novel two-stage edge-side fault diagnosis method based on double knowledge distillation. First, we offer a clustering-based self-knowledge distillation approach (Cluster KD), which takes the mean value of the sample diagnosis results, clusters them, and takes the clustering results as the terms of the loss function. It utilizes the correlations between faults of the same type to improve the accuracy of the teacher model, especially for fault categories with high similarity. Then, the double knowledge distillation framework uses ordinary knowledge distillation to build a lightweight model for edge-side deployment. We propose a two-stage edge-side fault diagnosis method (TSM) that separates fault detection and fault diagnosis into different stages: in the first stage, a fault detection model based on a denoising auto-encoder (DAE) is adopted to achieve fast fault responses; in the second stage, a diverse convolution model with variance weighting (DCMVW) is used to diagnose faults in detail, extracting features from micro and macro perspectives. Through comparison experiments conducted on two fault datasets, it is proven that the proposed method has high accuracy, low delays, and small computation, which is suitable for intelligent edge-side fault diagnosis. In addition, experiments show that our approach has a smooth training process and good balance.
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