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Intelligent control using /spl theta/-adaptive neural networks: a new approach to identification and control of nonlinear systems

机译:使用/ spl theta /自适应神经网络的智能控制:识别和控制非线性系统的新方法

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A novel use of neural networks for parameter estimation in nonlinear identification and control problems is proposed. The neural network is used to identify the relation between system variables and parameters of a dynamical system. Two different algorithms, a block estimation method and a recursive estimation method are presented. In the block estimation method, the neural network approximates the mapping between the system response and the system parameters, while in the recursive method, the parameter estimates are recursively updated by incorporating new information. Both methods are useful for parameter estimation in systems where either the structure of the nonlinearities present are unknown or when the parameters occur nonlinearly. Analytical conditions under which successful estimation can be carried out are studied. How the algorithms can be applied to control of nonlinear systems with unknown parameters and the associated stability issues are also discussed.
机译:提出了一种将神经网络用于参数估计的非线性辨识和控制问题的新方法。神经网络用于识别动力系统的系统变量和参数之间的关系。提出了两种不同的算法,块估计方法和递归估计方法。在块估计方法中,神经网络近似系统响应和系统参数之间的映射,而在递归方法中,参数估计是通过合并新信息来递归更新的。两种方法都可用于其中未知非线性结构未知或参数非线性发生的系统中的参数估计。研究了可以成功进行估计的分析条件。还讨论了如何将算法应用于参数未知的非线性系统的控制以及相关的稳定性问题。

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