Application of Deep Learning for Fault Diagnostic in Induction Machine’s Bearings

Nastaran Enshaei, F. Naderkhani
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引用次数: 10

Abstract

Recent developments in sensor technologies and advances in communication systems have resulted in deployment of a large number of sensors for collecting condition monitoring (CM) data in order to monitor health condition of a manufac-tring/industrial system. Efficient utilization of sensory data leads to highly accurate results in system fault diagnostics/prognostics. The exponential growth of CM data poses significant analytical challenges, due to their high variety, high dimensionality and high velocity rendering conventional health monitoring tools impractical. In this regard, the paper proposes a deep learning-based framework for fault diagnosis of an induction machine’s bearing based on real data set provided by Case Western Reserve University bearing data center. In particular, we focus on deep bidirectional long short-term memory (BiD-LSTM) networks fed with raw signals for fault diagnosis to address drawbacks of conventional machine learning (ML) solutions such as support vector machines. A numerical example is provided to illustrate the complete procedure of the proposed framework, which shows the great potentials of the BiD-LSTM for detection of different types of the bearing fault with high accuracy. The effectiveness of the proposed model is demonstrated through a comparison with a recently developed deep neural network (DNN) that considers temporal coherence for the same data set. The results indicate that the proposed framework provides considerably improved performance in comparison to its counterparts.
深度学习在感应电机轴承故障诊断中的应用
传感器技术的最新发展和通信系统的进步导致了大量传感器的部署,用于收集状态监测(CM)数据,以监测制造/工业系统的健康状况。有效利用传感数据可以在系统故障诊断/预测中获得高度准确的结果。CM数据的指数增长带来了重大的分析挑战,因为它们种类多、维度高、速度快,使得传统的健康监测工具变得不切实际。为此,本文基于凯斯西储大学轴承数据中心提供的真实数据集,提出了一种基于深度学习的感应电机轴承故障诊断框架。我们特别关注深度双向长短期记忆(BiD-LSTM)网络,该网络使用原始信号进行故障诊断,以解决传统机器学习(ML)解决方案(如支持向量机)的缺点。数值算例说明了所提框架的完整过程,说明了BiD-LSTM在高精度检测不同类型轴承故障方面的巨大潜力。通过与最近开发的考虑同一数据集的时间相干性的深度神经网络(DNN)的比较,证明了所提出模型的有效性。结果表明,与同类框架相比,所提出的框架提供了显着提高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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