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Detection of Rotor Eccentricity Faults in a Closed-Loop Drive-Connected Induction Motor Using an Artificial Neural Network

机译:利用人工神经网络检测闭环驱动感应电动机中的转子偏心故障

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摘要

A new method for the detection of rotor eccentricity faults in a closed-loop drive-connected induction motor is reported in this paper. Unlike a line-fed electric motor, the eccentricity-related fault signals exist in the current as well as the voltage of a drive-connected motor. Meanwhile, since the speed and therefore the mechanical load can change widely in variable speed applications, the amplitudes of the fault signals will vary accordingly. An artificial neural network is used in the detection to learn the complex relationship between the eccentricity-related harmonic amplitudes and the operating conditions. The neural network can estimate a threshold corresponding to an operating condition, which can then be used to predict the motor condition. The neural network is trained and tested with data collected on drive-connected 4-pole, 7.5 Hp, three-phase induction motors. The experimental results validate that the detection method is feasible over the whole range of operating conditions of the experimental motors.
机译:本文报道了一种用于检测闭环驱动连接感应电动机中转子偏心故障的新方法。与线性电动机不同,与偏心率相关的故障信号存在于与驱动器相连的电动机的电流和电压中。同时,由于速度和机械负载在变速应用中可能发生很大变化,因此故障信号的幅度将相应地变化。在检测中使用了人工神经网络,以了解与偏心率相关的谐波幅度与工作条件之间的复杂关系。神经网络可以估计与操作条件相对应的阈值,然后可以将其用于预测运动条件。使用在驱动器连接的4极7.5 Hp三相感应电动机上收集的数据对神经网络进行训练和测试。实验结果证明,该检测方法在实验电动机的整个工作条件范围内都是可行的。

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