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Adaptive inverse control for nonlinear systems based on RBF neural network

机译:基于RBF神经网络的非线性系统自适应逆控制。

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An adaptive inverse controller for nonlinear systems is designed by using RBF neural network. The controller consists of a RBF identification network and a RBF control network. An optimization algorithm is proposed for redundant number of hidden units of familiar RBF neural network, and the approach combines the rival penalized competitive learning (RPCL) and the improved regularized least squares (IRLS) to provide an efficient procedure for constructing a minimal RBF neural network that generalizes very well. The RPCL adjusts centers, while the IRLS estimates the connection weights. The effectiveness of the proposed controller is illustrated through a simulated application to a nonlinear system.
机译:利用RBF神经网络设计了一种非线性系统的自适应逆控制器。控制器由RBF识别网络和RBF控制网络组成。针对熟悉的RBF神经网络的隐藏单元的冗余数目,提出了一种优化算法,该方法结合了竞争性惩罚竞争学习(RPCL)和改进的正则最小二乘(IRLS),为构建最小的RBF神经网络提供了有效的程序。概括得很好。 RPCL调整中心,而IRLS估计连接权重。通过对非线性系统的仿真应用,说明了所提出控制器的有效性。

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