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Comparison of feedback controllers for feedback-error-learning neural network control system with application to a flexible micro-actuator

机译:反馈错误学习神经网络控制系统的反馈控制器的比较及其在柔性微执行器中的应用

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A neural network approach to on-line learning control and real time implementation for a flexible micro-actuator is presented. The flexible micro-actuator is made of a bimorph piezo-electric high-polymer material (Poly Vinylidene Fluoride). The control scheme consists of a feedforward neural network controller and a fixed-gain feedback controller. This neural network controller is trained so as to make the output of the feedback controller zero. In the process, the neural network learns the inverse dynamics of the system. We make some comparisons between PID and LQG controllers for this neural network controller. Experimental and numerical results for the tracking control of a piezopolymer actuator are presented and they show that the feedback-error-learning neural network is effective in accurately tracking a reference signal.
机译:提出了一种用于柔性微执行器的在线学习控制和实时实现的神经网络方法。柔性微致动器由双压电晶片压电高分子材料(聚偏二氟乙烯)制成。该控制方案由前馈神经网络控制器和固定增益反馈控制器组成。训练该神经网络控制器以使反馈控制器的输出为零。在此过程中,神经网络学习系统的逆动力学。我们对此神经网络控制器在PID和LQG控制器之间进行了一些比较。给出了压电聚合物致动器跟踪控制的实验和数值结果,结果表明,反馈误差学习神经网络可以有效地跟踪参考信号。

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