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Fault detection and diagnosis of permanent-magnet DC motor based on parameter estimation and neural network

机译:基于参数估计和神经网络的永磁直流电动机故障检测与诊断

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摘要

In this paper, fault detection and diagnosis of a permanent-magnet DC motor is discussed. Parameter estimation based on block-pulse function series is used to estimate the continuous-time model of the motor. The electromechanical parameters of the motor can be obtained from the estimated model parameters. The relative changes of electromechanical parameters are used to detect motor faults. A multilayer perceptron neural network is used to isolate faults based on the patterns of parameter changes. Experiments with a real motor validate the feasibility of the combined use of parameter estimation and neural network classification for fault detection and isolation of the motor.
机译:本文讨论了永磁直流电动机的故障检测与诊断。基于块脉冲函数序列的参数估计用于估计电动机的连续时间模型。电动机的机电参数可以从估计的模型参数中获得。机电参数的相对变化用于检测电动机故障。多层感知器神经网络用于根据参数变化的模式来隔离故障。在真实电机上进行的实验验证了参数估计和神经网络分类相结合用于电机故障检测和隔离的可行性。

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