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首页> 外文期刊>IEEE Transactions on Neural Networks >/spl theta/-adaptive neural networks: a new approach to parameter estimation
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/spl theta/-adaptive neural networks: a new approach to parameter estimation

机译:/ spl theta /自适应神经网络:参数估计的新方法

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摘要

A novel use of neural networks for parameter estimation in nonlinear systems is proposed. The approximating ability of the neural network is used to identify the relation between system variables and parameters of a dynamic system. Two different algorithms, a block estimation method and a recursive estimation method, are proposed. The block estimation method consists of the training of a neural network to approximate the mapping between the system response and the system parameters which in turn is used to identify the parameters of the nonlinear system. In the second method, the neural network is used to determine a recursive algorithm to update the parameter estimate. 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 but and several illustrative examples verifying the behavior of the algorithms through simulations are presented.
机译:提出了一种将神经网络用于非线性系统参数估计的新方法。神经网络的逼近能力用于识别动态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。块估计方法包括训练神经网络,以近似系统响应和系统参数之间的映射,而该映射又用于识别非线性系统的参数。在第二种方法中,神经网络用于确定用于更新参数估计的递归算法。两种方法都可用于未知非线性结构或参数非线性发生的系统中的参数估计。提出了可以进行成功估计的分析条件,但提供了一些通过仿真验证算法行为的示例性示例。

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