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Intelligent condition diagnosis method for rotating machinery using Relative Ratio Symptom Parameter and Bayesian Network

机译:基于相对比率症状参数和贝叶斯网络的旋转机械智能状态诊断方法

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In order to effectively identify faults of a rotating mechanics, a new kind of symptom parameter — Relative Ratio Symptom Parameter (RRSP) is proposed in this paper. Moreover, combined with Bayesian Network, the corresponding fault diagnosis system is built. In the paper, the vibration signals are monitored and measured and the relative ratio symptom parameter is calculated, of which the parameters whose identification index is bigger are chosen as the input of Bayesian Network, by observing and analyzing the output that is the probability of normal state and abnormal states, Bayesian Network in the mechanical fault diagnosis is proved to be effective by real date measured in each state of a rotating machine.
机译:为了有效地识别旋转机械故障,提出了一种新的症状参数-相对比率症状参数(RRSP)。此外,结合贝叶斯网络,建立了相应的故障诊断系统。本文通过对振动信号的监测和测量,计算出相对比率症状参数,通过观察和分析作为正常概率的输出,选择识别指数较大的参数作为贝叶斯网络的输入。状态和异常状态,通过在旋转机械的每种状态下测量的实际数据证明了贝叶斯网络在机械故障诊断中的有效性。

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