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Detection of broken rotor bars in induction motors using nonlinear Kalman filters

机译:使用非线性卡尔曼滤波器检测感应电动机中的转子条损坏

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摘要

This paper presents a model-based fault detection approach for induction motors. A new filtering technique using Unscented Kalman Filter (UKF) and Extended Kalman Filter (EKF) is utilized as a state estimation tool for on-line detection of broken bars in induction motors based on rotor parameter value estimation from stator current and voltage processing. The hypothesis on which the detection is based is that the failure events are detected by jumps in the estimated parameter values of the model. Both UKF and EKF are used to estimate the value of rotor resistance. Upon breaking a bar the estimated rotor resistance is increased instantly, thus providing two values of resistance after and before bar breakage. In order to compare the estimation performance of the EKF and UKF, both observers are designed for the same motor model and run with the same covariance matrices under the same conditions. Computer simulations are carried out for a squirrel cage induction motor. The results show the superiority of UKF over EKF in nonlinear system (such as induction motors) as it provides better estimates for rotor fault detection.
机译:本文提出了一种基于模型的感应电动机故障检测方法。一种基于Unscented Kalman滤波器(UKF)和Extended Kalman滤波器(EKF)的新滤波技术被用作状态估计工具,用于基于定子电流和电压处理的转子参数值估计来在线检测感应电动机中的断条。检测所基于的假设是,故障事件是通过模型的估计参数值的跳跃来检测的。 UKF和EKF均用于估算转子电阻值。断开钢筋后,估计的转子电阻会立即增加,从而在钢筋断裂前后提供两个电阻值。为了比较EKF和UKF的估计性能,两个观察者都针对相同的电机模型设计,并在相同的条件下使用相同的协方差矩阵运行。对鼠笼式感应电动机进行了计算机仿真。结果表明,在非线性系统(例如感应电动机)中,UKF优于EKF,因为它可以更好地估计转子故障。

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