Induction motor drive with field-oriented control and speed estimation using feedforward neural network

Jakub Bača, D. Kouril, P. Palacky, Jan Strossa
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引用次数: 3

Abstract

The paper presents the results of our research on the use of artificial neural networks for sensorless control of induction motor drives. A feedforward artificial neural network with one hidden layer was designed and trained offline to act as a model of induction motor, which directly provides the actual speed of a drive. The model was subsequently incorporated in the field-oriented control scheme, where it fully replaces an incremental encoder. The presented solution was tested out using an experimental drive equipped with a 2.2 kW induction machine and controlled by a control system which is based on the TMS320F28335 digital signal controller. The obtained experimental results show a high level of accuracy in the low speed range.
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感应电机驱动磁场定向控制和前馈神经网络速度估计
本文介绍了我们利用人工神经网络对感应电机驱动进行无传感器控制的研究结果。设计了一种具有一隐层的前馈人工神经网络,并进行了离线训练,作为感应电机模型,直接提供了驱动器的实际速度。该模型随后被纳入面向场的控制方案,在那里它完全取代了增量编码器。采用基于TMS320F28335数字信号控制器的控制系统,在配备2.2 kW感应电机的实验驱动器上对该方案进行了验证。实验结果表明,该方法在低速范围内具有较高的精度。
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