Mechanical fault diagnosis using wireless sensor networks and a two-stage neural network classifier

P. Ballal, A. Ramani, Matthew B. Middleton, Christopher D. McMurrough, A. Athamneh, Weijen Lee, C. Kwan, F. Lewis
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引用次数: 16

Abstract

This paper has three contributions. First, we develop a low-cost test-bed for simulating bearing faults in a motor. In Aerospace applications, it is important that motor fault signatures are identified before a failure occurs. It is known that 40% of mechanical failures occur due to bearing faults. Bearing faults can be identified from the motor vibration signatures. Second, we develop a wireless sensor module for collection of vibration data from the test-bed. Wireless sensors have been used because of their advantages over wired sensors in remote sensing. Finally, we use a novel two-stage neural network to classify various bearing faults. The first stage neural network estimates the principal components using the Generalized Hebbian Algorithm (GHA). Principal Component Analysis is used to reduce the dimensionality of the data and to extract the fault features. The second stage neural network uses a supervised learning vector quantization network (SLVQ) utilizing a self organizing map approach. This stage is used to classify various fault modes. Neural networks have been used because of their flexibility in terms of online adaptive reformulation. At the end, we discuss the performance of the proposed classification method.
基于无线传感器网络和两阶段神经网络分类器的机械故障诊断
这篇论文有三个贡献。首先,我们开发了一个低成本的模拟电机轴承故障的试验台。在航空航天应用中,在故障发生之前识别电机故障特征是很重要的。众所周知,40%的机械故障是由于轴承故障而发生的。轴承故障可以从电机振动特征中识别出来。其次,我们开发了一个无线传感器模块,用于从试验台收集振动数据。无线传感器由于其在遥感方面优于有线传感器而得到广泛应用。最后,采用一种新的两阶段神经网络对各种轴承故障进行分类。第一阶段神经网络使用广义赫比算法(GHA)估计主成分。采用主成分分析对数据进行降维,提取故障特征。第二阶段神经网络采用自组织映射方法的监督学习向量量化网络(SLVQ)。该阶段用于对各种故障模式进行分类。神经网络由于其在线自适应重构方面的灵活性而被广泛使用。最后,我们讨论了所提出的分类方法的性能。
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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