A Bearing Fault Diagnosis Method using Transfer Learning and Dempster-Shafer Evidence Theory

Duy-Tang Hoang, Hee-Jun Kang
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引用次数: 5

Abstract

Rolling element bearings are among the most important components in rotary machines. The reliable operation of rotary machines highly depends on the performance of bearing. Therefore, bearing fault diagnosis is a critical task in the industry. Signal-based fault diagnosis for bearings has applied extensively deep learning algorithms because of their ability to automatically extract features from fault signals measured from rotary machines. However, designing a deep learning model for any fault diagnosis problem is not a trivial task since each deep model has a complex structure and a huge number of hyper-parameters and trainable parameters. Each hyper-parameter of a deep learning model has a profound impact on the performance of that model. The selection of appropriate hyper-parameters is often conducted manually based on the Trial & Error method and experiences of the designer. Transfer learning is a technique that adopts already existing machine learning models into new domains. This technique helps to save the designing and training time of machine learning models, especially deep neural networks. In this paper, transfer learning technique is exploited to the problem of bearing fault diagnosis. A pre-trained deep neural network in the domain of image classification is adopted and modified to extract features from vibration signals measured by multiple sensors. The effectiveness of the proposed method is verified by experiments conducted with actual bearing data set supplied by Case Western Reverse University Bearing Data Center.
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基于迁移学习和Dempster-Shafer证据理论的轴承故障诊断方法
滚动轴承是旋转机械中最重要的部件之一。旋转机械的可靠运行在很大程度上取决于轴承的性能。因此,轴承故障诊断是行业中的一项关键任务。基于信号的轴承故障诊断广泛应用深度学习算法,因为它们能够从旋转机械的故障信号中自动提取特征。然而,为任何故障诊断问题设计深度学习模型并不是一项简单的任务,因为每个深度模型都具有复杂的结构和大量的超参数和可训练参数。深度学习模型的每个超参数都会对模型的性能产生深远的影响。适当的超参数的选择通常是基于设计师的试错方法和经验手动进行的。迁移学习是一种将已有的机器学习模型应用到新领域的技术。该技术有助于节省机器学习模型,特别是深度神经网络的设计和训练时间。本文将迁移学习技术应用于轴承故障诊断问题。采用图像分类领域预训练的深度神经网络,对其进行改进,从多传感器测量的振动信号中提取特征。用凯斯西逆大学轴承数据中心提供的实际轴承数据集进行了实验,验证了该方法的有效性。
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