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A Fault Diagnosis Methodology for Gear Pump Based on EEMD and Bayesian Network

机译:基于EEMD和贝叶斯网络的齿轮泵故障诊断方法。

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摘要

This paper proposes a fault diagnosis methodology for a gear pump based on the ensemble empirical mode decomposition (EEMD) method and the Bayesian network. Essentially, the presented scheme is a multi-source information fusion based methodology. Compared with the conventional fault diagnosis with only EEMD, the proposed method is able to take advantage of all useful information besides sensor signals. The presented diagnostic Bayesian network consists of a fault layer, a fault feature layer and a multi-source information layer. Vibration signals from sensor measurement are decomposed by the EEMD method and the energy of intrinsic mode functions (IMFs) are calculated as fault features. These features are added into the fault feature layer in the Bayesian network. The other sources of useful information are added to the information layer. The generalized three-layer Bayesian network can be developed by fully incorporating faults and fault symptoms as well as other useful information such as naked eye inspection and maintenance records. Therefore, diagnostic accuracy and capacity can be improved. The proposed methodology is applied to the fault diagnosis of a gear pump and the structure and parameters of the Bayesian network is established. Compared with artificial neural network and support vector machine classification algorithms, the proposed model has the best diagnostic performance when sensor data is used only. A case study has demonstrated that some information from human observation or system repair records is very helpful to the fault diagnosis. It is effective and efficient in diagnosing faults based on uncertain, incomplete information.
机译:本文提出了一种基于集成经验模态分解(EEMD)方法和贝叶斯网络的齿轮泵故障诊断方法。本质上,提出的方案是基于多源信息融合的方法。与仅使用EEMD的常规故障诊断相比,该方法能够利用传感器信号以外的所有有用信息。提出的贝叶斯诊断网络由故障层,故障特征层和多源信息层组成。来自传感器测量的振动信号通过EEMD方法分解,并且固有模式函数(IMF)的能量被计算为故障特征。这些特征被添加到贝叶斯网络的故障特征层中。其他有用信息源将添加到信息层。可以通过完全合并故障和故障症状以及其他有用信息(如肉眼检查和维护记录)来开发通用的三层贝叶斯网络。因此,可以提高诊断准确性和容量。将该方法应用于齿轮泵的故障诊断,建立了贝叶斯网络的结构和参数。与人工神经网络和支持向量机分类算法相比,该模型在仅使用传感器数据时具有最佳的诊断性能。案例研究表明,来自人类观察或系统维修记录的某些信息对于故障诊断非常有帮助。它可以基于不确定,不完整的信息来有效地诊断故障。

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