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A Fault Diagnosis System for a Mechanical Reducer Gear-Set Using Wigner-Ville Distribution and an Artificial Neural Network

机译:基于Wigner-Ville分布和人工神经网络的机械减速器齿轮组故障诊断系统

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This paper describes a fault diagnosis system for mechanical reducer gear-sets using Wigner-Ville distribution and artificial neural network techniques. Reducer gear-sets are used in various traditional and modern industries. In the production of a reducer, the vibration and noise signals of the gear-set are usually used to determine the defective products or defective positions. Unfortunately, conventional fault diagnosis by humans is limited effectiveness and has no numerical standards. In the present study, the vibration signal of the gear-set is used to evaluate the proposed fault diagnosis technique. In the experimental work, feature extraction by Wigner-Ville distribution is proposed for analyzing fault signals in the reducer gear-set platform. Artificial neural network techniques using both a general regression neural network and conventional back-propagation network are compared in the system. The experimental results show the vibration can be used to monitor the condition of the gear-set platform and the general regression neural network (GRNN) has a better recognition rate and less recognition time than the back-propagation neural network (BPNN)
机译:本文介绍了一种使用Wigner-Ville分布和人工神经网络技术的机械减速器齿轮组的故障诊断系统。减速器齿轮组用于各种传统和现代行业。在减速器的生产中,齿轮组的振动和噪声信号通常用于确定有缺陷的产品或有缺陷的位置。不幸的是,由人进行的常规故障诊断的有效性有限并且没有数值标准。在本研究中,齿轮组的振动信号用于评估所提出的故障诊断技术。在实验工作中,提出了利用Wigner-Ville分布进行特征提取以分析减速器齿轮组平台中的故障信号。在系统中比较了使用通用回归神经网络和常规反向传播网络的人工神经网络技术。实验结果表明,该振动可用于监测齿轮组平台的状态,与反向传播神经网络(BPNN)相比,通用回归神经网络(GRNN)具有更好的识别率和更少的识别时间。

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