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Stator current model reference adaptive systems speed estimator for regenerating-mode low-speed operation of sensorless induction motor drives

机译:无传感器感应电动机驱动器再生模式低速运行的定子电流模型参考自适应系统速度估计器

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摘要

The performance of a stator current-based model reference adaptive systems (MRAS) speed estimator for sensorless induction motor drives is investigated in this study. The measured stator currents are used as a reference model for the MRAS observer to avoid the use of a pure integrator. A two-layer, online-trained neural network stator current observer is used as the adaptive model for the MRAS estimator which requires the rotor flux information. This can be obtained from the voltage or current models, but instability and dc drift can downgrade the overall observer performance. To overcome these problems of rotor flux estimation, an off-line trained multilayer feed-forward neural network is proposed here as a rotor flux observer. Hence, two networks are employed: the first is online trained for stator current estimation and the second is off-line trained for rotor flux estimation. Sensorless operation for the proposed MRAS scheme using current model and neural network rotor flux observers are investigated based on a set of experimental tests in the low-speed region. Using a neural network rotor flux observer to replace the current model is shown to solve the stability problem in the low-speed regenerating mode of operation.
机译:在这项研究中研究了基于定子电流的无传感器感应电动机驱动器的模型参考自适应系统(MRAS)速度估计器的性能。测得的定子电流用作MRAS观测器的参考模型,以避免使用纯积分器。使用两层在线训练的神经网络定子电流观测器作为MRAS估计器的自适应模型,该模型需要转子磁通信息。这可以从电压或电流模型中获得,但是不稳定和直流漂移会降低整体观察者的性能。为了克服转子磁通估算的这些问题,这里提出了一种离线训练的多层前馈神经网络作为转子磁通观测器。因此,采用了两个网络:第一个网络在线训练以进行定子电流估计,第二个网络离线训练以进行转子磁通估计。基于低速区域的一组实验测试,研究了使用电流模型和神经网络转子磁通观测器的拟议MRAS方案的无传感器运行。显示了使用神经网络转子磁通观测器代替当前模型来解决低速再生运行模式下的稳定性问题。

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