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Thermal analysis MLP neural network based fault diagnosis on worm gears

机译:基于热分析MLP神经网络的蜗轮蜗杆故障诊断

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The importance of fault diagnoses, in any kind of machinery, can't be over stated. Any undetected small fault in machinery will most probably rise with time and will cause machinery to shut down thus resulting in both mechanical and more importantly economical loss for the industry. In recent years, researches have been done for the faults diagnosis through the analysis of their vibration and sound signatures. The extraction of those characteristic signatures is a complicated process because complexities in modern day machineries can results in many vibration and sound generating sources. This paper presents a condition based fault diagnoses technique to detect the condition of gear. An experimental setup, consisting of a worm gear driven by an electric motor, was setup to conduct tests under different working conditions. The vibration and sound signature signals of worm gear were examined for normal and faulty conditions under different speeds and oil levels. The collected data was then used for feature extraction, by using Fast Fourier Transform to filter background noise signals and to collect only the signature of the gearbox vibration and sound signals. An MLP (Multilayer Perceptron) Artificial Neural Network Model has been developed to classify the signature signals. A thermal camera is also used to observe the heating patterns for all those working conditions. With the help of MLP Artificial Neural Network it is possible to predict the speed and oil level of the gearbox and hence a possible fault diagnoses is also feasible. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在任何类型的机械中,故障诊断的重要性都不能过分强调。机械中任何未检测到的小故障很可能会随着时间的流逝而上升,并会导致机械停机,从而给机械行业造成机械损失,更重要的是经济损失。近年来,已经通过分析其振动和声音特征来进行故障诊断的研究。这些特征标记的提取是一个复杂的过程,因为现代机械的复杂性会导致产生许多振动和声音产生源。本文提出了一种基于状态的故障诊断技术来检测齿轮的状态。实验装置由电动马达驱动的蜗轮组成,可以在不同的工作条件下进行测试。在不同的速度和油位下,检查蜗轮的振动和声音信号是否正常和故障。然后,通过使用快速傅立叶变换过滤背景噪声信号并仅收集齿轮箱振动和声音信号的特征,将收集到的数据用于特征提取。已开发出MLP(多层感知器)人工神经网络模型来对签名信号进行分类。热像仪还用于观察所有这些工作条件下的加热方式。借助MLP人工神经网络,可以预测变速箱的速度和油位,因此可能的故障诊断也是可行的。 (C)2016 Elsevier Ltd.保留所有权利。

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