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Quantitative Diagnosis of Rotor Vibration Fault Using Process Power Spectrum Entropy and Support Vector Machine Method

机译:基于过程功率谱熵和支持向量机的转子振动故障定量诊断

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To improve the diagnosis capacity of rotor vibration fault in stochastic process, an effective fault diagnosis method (named Process Power Spectrum Entropy (PPSE) and Support Vector Machine (SVM) (PPSE-SVM, for short) method) was proposed. The fault diagnosis model of PPSE-SVM was established by fusing PPSE method and SVM theory. Based on the simulation experiment of rotor vibration fault, process data for four typical vibration faults (rotor imbalance, shaft misalignment, rotor-stator rubbing, and pedestal looseness) were collected under multipoint (multiple channels) and multispeed. By using PPSE method, the PPSE values of these data were extracted as fault feature vectors to establish the SVM model of rotor vibration fault diagnosis. From rotor vibration fault diagnosis, the results demonstrate that the proposed method possesses high precision, good learning ability, good generalization ability, and strong fault-tolerant ability (robustness) in four aspects of distinguishing fault types, fault severity, fault location, and noise immunity of rotor stochastic vibration. This paper presents a novel method (PPSE-SVM) for rotor vibration fault diagnosis and real-time vibration monitoring. The presented effort is promising to improve the fault diagnosis precision of rotating machinery like gas turbine.
机译:为了提高随机过程中转子振动故障的诊断能力,提出了一种有效的故障诊断方法(称为过程功率谱熵(PPSE)和支持向量机(SVM)(简称PPSE-SVM))。结合PPSE方法和SVM理论,建立了PPSE-SVM的故障诊断模型。基于转子振动故障的仿真实验,在多点(多通道)和多速下收集了四种典型振动故障(转子不平衡,轴不对中,转子定子摩擦和基座松动)的过程数据。利用PPSE方法提取这些数据的PPSE值作为故障特征向量,建立转子振动故障诊断的SVM模型。通过转子振动故障诊断,结果表明,该方法在区分故障类型,故障严重程度,故障位置和噪声四个方面,具有较高的精度,良好的学习能力,良好的泛化能力和较强的容错能力(鲁棒性)。转子随机振动的抗扰性。本文提出了一种用于转子振动故障诊断和实时振动监测的新方法(PPSE-SVM)。提出的努力有望提高燃气轮机等旋转机械的故障诊断精度。

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