基于神经模糊控制器的感应电机间接定向自适应控制

A. Mechernene, M. Zerikat, S. Chekroun
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引用次数: 14

摘要

本文提出了一种完全基于人工智能概念的自适应结构,用于异步电动机的速度控制,而无需对电动机的动态进行任何识别。采用参考模型控制,神经模糊控制器具有良好的跟踪性能和鲁棒性。合成了一种神经自适应机制,对控制器产生的规律进行校正,提供补偿信号。最后,将其添加到控制器输出中,生成适当的适应律。通过不同工况下的仿真试验,验证了该结构的有效性和可行性。
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Indirect field oriented adaptive control of induction motor based on neuro-fuzzy controller
The present paper proposes an adaptive structure, completely based on the artificial intelligence concepts, for speed control of an induction motor, without any identification of the motor dynamic. Approach with reference model has been chosen, and a neuro-fuzzy controller assures excellent qualities in terms of tracking, and disturbance rejection with high robustness. A neural adaptive mechanism is synthesized to correct the law generated by the controller to provide a compensation signal. This last, added to the controller output, generate the appropriate adapted law. The effectiveness and feasibility of the structure developed is verified by several simulation tests with different conditions operating.
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