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Resultant vibration signal model based fault diagnosis of a single stage planetary gear train with an incipient tooth crack on the sun gear

机译:基于结果振动信号模型的太阳轮初始齿裂纹的单级行星齿轮系故障诊断

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Planetary gear trains equipped in wind turbine often run under slow speed and non-stationary load condition. The incipient gear faults in a wind turbine gearbox can hardly be detected yet might cause tremendous loss. In order to detect the incipient faults, a resultant vibration signal model is proposed to characterize the faulty features of a single stage planetary gear train working under non-stationary load conditions. For this purpose, an analytical dynamic model is developed. By introducing the crack-induced mesh stiffness and varying load into the dynamic model, the vibration responses of the system are predicted. Based on this, a resultant vibration signal model is developed in the form of weighted summation of mesh vibration signals. With the resultant model, the vibration signals of an example system are simulated and analyzed. The simulation results indicate that varying load and tooth crack make the system's vibration signals become extremely complicated in both time and frequency domains. The incipient tooth crack induced impulse vibration signals are too weak to be identified in the time domain but can be detected from the order spectrum. The simulation results from the resultant signal model are verified by the test rig experimental measurements. (C) 2018 Elsevier Ltd. All rights reserved.
机译:风力涡轮机中配备的行星齿轮系通常在低速和非平稳负载条件下运行。风力涡轮机变速箱中的初期齿轮故障几乎无法检测到,但可能造成巨大的损失。为了检测早期故障,提出了合成振动信号模型,以表征在非稳态载荷条件下工作的单级行星齿轮系的故障特征。为此目的,开发了分析动力学模型。通过将裂纹引起的网格刚度和变化的载荷引入动力学模型,可以预测系统的振动响应。基于此,以网格振动信号的加权求和形式开发了最终的振动信号模型。利用结果模型,可以对示例系统的振动信号进行仿真和分析。仿真结果表明,不断变化的载荷和齿裂使系统的振动信号在时域和频域都变得极为复杂。初期齿裂引起的脉冲振动信号太弱,无法在时域中识别出来,但可以从阶次谱中检测出来。来自测试结果的信号模型的仿真结果通过试验台的实验测量得到了验证。 (C)2018 Elsevier Ltd.保留所有权利。

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