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A Neural-Network-Based Model Reference Speed Control for High Precision Motion Control Systems

机译:基于神经网络的高精度运动控制系统的模型参考速度控制

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This paper developed a model reference control scheme by introducing a PI controller and RBF neural network (RBFNN) controller for speed control of high precision motion control systems. In the paper the RBF controller is able to online learn the unknown model dynamics, parameter variation and disturbance of the system. The model reference adaptive control (MRAC) scheme is used to give better solutions with online adaptation. By using a PI controller, the dynamic performance of the system is improved. This paper introduced a feedback parameter{sup}(K{sub}f), which makes it easier to assign the poles of the system. Thus, it is feasible to preserve favorable model-following characteristics under various conditions. The effectiveness of the proposed control scheme is demonstrated by simulation. It is found that the proposed scheme can reduce the plant's sensitivity to parameter variation and disturbance. High precision performance is obtained when given constant and sine wave disturbance at the same time.
机译:本文通过引入PI控制器和RBF神经网络(RBFNN)控制器来开发了模型参考控制方案,用于高精度运动控制系统的速度控制。在纸质中,RBF控制器能够在线学习未知的模型动态,参数变化和系统的干扰。模型参考自适应控制(MRAC)方案用于提供具有在线适应的更好解决方案。通过使用PI控制器,提高了系统的动态性能。本文介绍了反馈参数{sup}(k {sub} f),这使得可以更容易地分配系统的极点。因此,在各种条件下保持有利的模型特征是可行的。通过模拟证明了所提出的控制方案的有效性。结果发现,该方案可以降低植物对参数变异和干扰的敏感性。当同时给出恒定和正弦波干扰时获得高精度性能。

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