Comparative analysis of optimization algorithm on DSAE model for bearing fault diagnosis

S. R. Saufi, Mat Hussin Ab Talib, Zair Asrar Bin Ahmad, Lim Meng Hee, M. Leong, Mohd Haffizzi Bin Md Idris
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Abstract

A rolling-element bearing is one of the most vital components in machinery and maintaining the bearing health condition is very important. Intelligent fault detection and diagnosis based on deep sparse autoencoder (DSAE) is presented to improve the current maintenance strategy. The conventional maintenance strategy suffers from manual feature extraction and feature selection. In this project, the DSAE model made up of multiple layers of neural networks that can perform automated feature extraction and feature dimensional reduction is proposed. The DSAE model is used to extract the important features from the Fast Fourier Transform (FFT) images by learning the high-level feature from the unlabeled images. However, the DSAE model requires hyperparameter selection of which manual hand-tuning is time-intensive. The DSAE model contains four hidden layers and requires 12 hyperparameters selection. The hyperparameter is automatically selected using an optimization algorithm. The comparative study is conducted on three optimization algorithms, namely particle swarm optimization (PSO), grey wolf optimizer (GWO) and genetic algorithm (GA). The overall analysis result shows that the proposed model achieved 100% diagnosis accuracy. Furthermore, the proposed model is tested with a completely new dataset and the result indicated that the DSAE model achieved 93.5% accuracy for the new dataset. The grey-wolf optimizer optimized quicker compared to PSO and GA.
基于DSAE模型的轴承故障诊断优化算法对比分析
滚动轴承是机械中最重要的部件之一,保持轴承的健康状态非常重要。为了改进现有的维修策略,提出了基于深度稀疏自编码器(DSAE)的智能故障检测与诊断方法。传统的维护策略受到手动特征提取和特征选择的困扰。在本项目中,提出了由多层神经网络组成的DSAE模型,该模型可以自动进行特征提取和特征降维。DSAE模型通过学习未标记图像的高级特征,从快速傅里叶变换(FFT)图像中提取重要特征。然而,DSAE模型需要超参数选择,手动调整是费时的。DSAE模型包含4个隐藏层,需要选择12个超参数。超参数是通过优化算法自动选择的。对粒子群优化算法(PSO)、灰狼优化算法(GWO)和遗传算法(GA)三种优化算法进行了对比研究。综合分析结果表明,该模型的诊断准确率达到100%。此外,在一个全新的数据集上对该模型进行了测试,结果表明DSAE模型在新数据集上的准确率达到了93.5%。与PSO和GA相比,灰狼优化器优化速度更快。
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