Minor Fault Detection for Permanent Magnet Synchronous Motor Based on Fractional Order Model and Relative Rate of Change

Wei Yu, C. Wen
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引用次数: 1

Abstract

Permanent magnet synchronous motor is a kind of typical nonlinear complex system. With its excellent performance such as high torque density, high efficiency and high reliability, it becomes the mainstream motor in the fields of active aircraft, electric vehicles and industrial servo drives. However, the existing fault diagnosis based on integer order model does not consider the fractional-order characteristics contained in the electromagnetic coupling and friction in the motor system, then it is difficult to effectively diagnose minor faults of the current with the residual error signal. In this paper, based on the traditional method, the state space representation based on fractional order model and the fault detection method of Kalman filter algorithm are introduced, and the secondary detection is adopted to calculate the relative change rate of typical fault feature quantity, and the experiment is verified.
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基于分数阶模型和相对变化率的永磁同步电机小故障检测
永磁同步电机是一种典型的非线性复杂系统。它以其高转矩密度、高效率、高可靠性等优异性能,成为主动式飞机、电动汽车、工业伺服驱动等领域的主流电机。然而,现有的基于整数阶模型的故障诊断没有考虑电机系统中电磁耦合和摩擦所包含的分数阶特性,难以有效地诊断带有残余误差信号的电流小故障。本文在传统方法的基础上,引入了基于分数阶模型的状态空间表示和卡尔曼滤波算法的故障检测方法,采用二次检测计算典型故障特征量的相对变化率,并对实验进行了验证。
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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