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An adaptive internal model control system of a piezo-ceramic actuator with two RBF neural networks

机译:具有两个RBF神经网络的压电陶瓷执行器的自适应内模控制系统

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This paper presents a neural network based positioning control system of a piezo-ceramic actuator which exhibits hysteretic behavior. Proposed control system utilizes two neural networks with radial basis function (RBF) as their activation functions: one is used for modeling hysteretic behavior of the actuator and the other is assigned the role of a feedback controller for hysteresis compensation and tracking. The particle swarm optimization algorithm has been applied to the training of RBF-NN for modeling PZT dynamics to achieve high precision, whereas back propagation has been used for online controller parameters update. An internal model control (IMC) structure is employed which combines aforementioned two neural networks for positioning control of the actuator. Results of the positioning control simulation of PZT will be shown to indicate the validity of the proposed two RBF-NN internal model control system.
机译:本文提出了一种基于神经网络的压电陶瓷作动器的定位控制系统,该系统表现出磁滞行为。提出的控制系统利用两个带有径向基函数(RBF)的神经网络作为其激活函数:一个用于建模执行器的磁滞行为,另一个用于反馈控制器的作用,用于磁滞补偿和跟踪。粒子群优化算法已应用于RBF-NN的训练,以对PZT动力学建模以实现高精度,而反向传播已用于在线控制器参数更新。采用内部模型控制(IMC)结构,该结构结合了上述两个神经网络,用于执行器的定位控制。将显示PZT的定位控制仿真结果,以表明所提出的两个RBF-NN内模控制系统的有效性。

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