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Field-oriented control of induction motors using neural-network decouplers

机译:使用神经网络解耦器的感应电动机磁场定向控制

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This paper presents a novel approach to the field-oriented control (FOC) of induction motor drives. It discusses the introduction of artificial neural networks (ANNs) for decoupling control of induction motors using FOC principles. Two ANNs are presented for direct and indirect FOC applications. The first performs an estimation of the stator flux for direct field orientation, and the second is trained to map the nonlinear behavior of a rotor-flux decoupling controller. A decoupling controller and flux estimator were implemented upon these ANNs using the MATLAB/SIMULINK neural-network toolbox. The data for training are obtained from a computer simulation of the system and experimental measurements. The methodology used to train the networks with the backpropagation learning process is presented. Simulation results reveal some very interesting features and show that the networks have good potential for use as an alternative to the conventional field-oriented decoupling control of induction motors.
机译:本文提出了一种新型的感应电动机驱动器的磁场定向控制(FOC)方法。它讨论了使用FOC原理对异步电动机进行解耦控制的人工神经网络(ANN)的介绍。提出了两种用于直接和间接FOC应用的ANN。第一个执行直接磁场定向的定子磁通的估计,第二个进行训练以映射转子磁通解耦控制器的非线性行为。使用MATLAB / SIMULINK神经网络工具箱在这些ANN上实现了去耦控制器和通量估计器。用于训练的数据是从系统的计算机仿真和实验测量中获得的。提出了用于通过反向传播学习过程训练网络的方法。仿真结果揭示了一些非常有趣的功能,并表明该网络具有很好的潜力,可以替代感应电动机的传统的磁场定向解耦控制。

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