The diagnosis method for induction motor bearing fault based on Volterra series

Changqing Xu, C. Qiu, Meng Xia, G. Cheng, Z. Xue
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引用次数: 1

Abstract

A new method for identifying induction motor bearing fault is introduced in this paper, it's based on the Volterra series which can describe the nonlinear transfer characteristics of system. Firstly, analyze the theory that bearing fault can cause torque vibration, and the simplify equation of stator current and voltage on bearing fault state is derived. The stator voltage and current signals are used as the input and output of Volterra series, then adaptive chaotic quantum particle swarm optimization (ACQPSO) is introduced for the identification of Volterra series time-domain kernel, and the bearing fault can be identified by the changes of nonlinear transfer characteristics. In order to validate the method, the induction motor bearing fault simulated test system is established in the lab to simulate the single point damage of bearing outer race which gradually expand; through the extraction of the changes of the kernel, the bearing fault and its severity can be identified. Thus verified the feasibility and effectiveness of the proposed method, the method is suitable for the prediction of the trends of bearing fault.
基于Volterra系列的感应电机轴承故障诊断方法
本文提出了一种基于Volterra级数的感应电机轴承故障识别新方法,该方法可以描述系统的非线性传递特性。首先,分析了轴承故障引起转矩振动的理论,推导了轴承故障状态下定子电流和电压的简化方程;将定子电压和电流信号作为Volterra系列的输入和输出,引入自适应混沌量子粒子群算法(ACQPSO)对Volterra系列时域核进行识别,通过非线性传递特性的变化来识别轴承故障。为了验证该方法的有效性,在实验室建立了感应电机轴承故障模拟试验系统,模拟了轴承外圈逐渐扩大的单点损伤;通过提取核的变化,可以识别轴承故障及其严重程度。从而验证了所提方法的可行性和有效性,该方法适用于轴承故障趋势的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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