机械故障模拟器在不同载荷下转子故障诊断

Zhiqiang Cai, Shudong Sun, Shubin Si, Wenbin Zhang
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引用次数: 4

摘要

机械故障诊断是机械工程中发现机械故障的一个领域。本文采用贝叶斯网络分类器和数据挖掘技术对机械故障模拟器在不同负荷下的不同类型转子故障进行诊断。首先,介绍了三种常用的BN分类器作为转子故障的诊断模型,并通过数据挖掘建立了基于BN分类器的故障诊断建模方法。然后,引入MFS,应用MFS生成不同转子故障系统在不同载荷下的振动数据,分别作为数据集1、数据集2和数据集3。最后,利用MFS生成的数据集1演示了基于BN分类器的转子故障诊断过程。对数据集2和数据集3也进行了相同的处理,以显示不同负载下诊断结果的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rotor fault diagnosis for machinery fault simulator under varied loads
Machine fault diagnosis is a field of mechanical engineering concerned with finding faults arising in machines. In this paper, we use the Bayesian network (BN) classifiers and data mining technology to diagnose different kinds of rotor faults in machinery fault simulator (MFS) under varied loads. First of all, three kinds of popular BN classifiers are introduced as the diagnosis model for rotor fault, and the fault diagnosis modeling methods based on BN classifiers is established by data mining. Then, a MFS is introduced and applied to generate the vibration data of system with different rotor faults under varied loads, as dataset 1, dataset 2 and dataset 3. At last, the dataset 1 generated by MFS is used to demonstrate the rotor fault diagnosis process with BN classifiers. The same procedures are also implemented for dataset 2 and dataset 3 to show the difference of diagnosis results under varied loads.
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