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Intelligent diagnosis method of multi-fault state for plant machinery using wavelet analysis, genetic programming and possibility theory

机译:基于小波分析,遗传规划和可能性理论的植物机械多故障状态智能诊断方法

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This paper proposes an intelligent diagnosis method for plant machinery in multi-fault state using wavelet analysis, genetic programming (GP), and possibility theory. The wavelet analysis is used to extract feature spectra of multi-fault state from measured vibration signal for the diagnosis. Excellent symptom parameters for distinguishing fault states are automatically generated by GP. Because the value of symptom parameter calculated to express the feature of the vibration signal fluctuates even if machine state does not change, fuzzy diagnosis is necessary. After obtaining the excellent symptom parameters by GP called GP-SPs, the membership functions of GP-SPs are needed for fuzzy diagnosis. We also discuss the identification method of membership function of symptom parameters using probability theory and possibility theory, and show the inference method for identifying faults types. The methods proposed in this paper are verified by applying them to the diagnosis of rolling bearing in multi-fault state.
机译:提出了一种基于小波分析,遗传规划(GP)和可能性理论的多故障状态机械智能诊断方法。小波分析用于从测得的振动信号中提取多故障状态的特征谱,以进行诊断。 GP会自动生成用于区分故障状态的出色症状参数。因为即使机器状态没有变化,为表示振动信号的特征而计算出的症状参数的值也会变动,因此需要模糊诊断。由GP获得了出色的症状参数(称为GP-SP)后,就需要使用GP-SP的隶属函数进行模糊诊断。我们还讨论了使用概率论和可能性论来确定症状参数隶属函数的方法,并给出了用于识别故障类型的推理方法。本文提出的方法在多故障状态下滚动轴承的诊断中得到了验证。

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