In-belt vibration monitoring of conveyor belt idler bearings by using wavelet package decomposition and artificial intelligence

Q3 Engineering
W. A. Roos, P. S. Heyns
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引用次数: 3

Abstract

Visual and acoustic methods are commonly used to identify faulty or failing idler bearings but these methods can become tedious and time consuming in practice. While vibration monitoring might look like an obvious choice to explore, the instrumentation of individual idler bearings would be prohibitively expensive. The potential for using an accelerometer that moves with the belt while tracking the condition of all bearings encountered along the way is therefore potentially interesting. This possibility is explored in this work on a laboratory scale test rig. Wavelet package decomposition is used to extract the bearing features and present it to an artificial neural network and support vector machine to identify and classify faulty idler bearings. The system could not only identify faulty bearings but also classify the faults accurately.
基于小波包分解和人工智能的输送带托辊轴承带内振动监测
视觉和声学方法通常用于识别有故障或失效的惰轮轴承,但这些方法在实践中可能会变得乏味和耗时。虽然振动监测看起来是一个显而易见的探索选择,但单个惰轮轴承的仪器价格昂贵得令人望而却步。因此,在跟踪沿途遇到的所有轴承的状况的同时,使用与皮带一起移动的加速度计的潜力是潜在的。这种可能性在实验室规模的试验台上进行了探索。小波包分解用于提取轴承特征,并将其提供给人工神经网络和支持向量机,以识别和分类故障惰轮轴承。该系统不仅可以识别故障轴承,而且可以准确地对故障进行分类。
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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来源期刊
International Journal of Mining and Mineral Engineering
International Journal of Mining and Mineral Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
1.90
自引率
0.00%
发文量
1
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