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首页> 外文期刊>IEEE transactions on circuits and systems . I , Regular papers >A fully automated recurrent neural network for unknown dynamic system identification and control
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A fully automated recurrent neural network for unknown dynamic system identification and control

机译:用于未知动态系统识别和控制的全自动递归神经网络

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摘要

This paper presents a fully automated recurrent neural network (FARNN) that is capable of self-structuring its network in a minimal representation with satisfactory performance for unknown dynamic system identification and control. A novel recurrent network, consisting of a fully-connected single-layer neural network and a feedback interconnected dynamic network, was developed to describe an unknown dynamic system as a state-space representation. Next, a fully automated construction algorithm was devised to construct a minimal state-space representation with the essential dynamics captured from the input-output measurements of the unknown system. The construction algorithm integrates the methods of minimal model determination, parameter initialization and performance optimization into a systematic framework that totally exempt trial-and-error processes on the selections of network sizes and parameters. Computer simulations on benchmark examples of unknown nonlinear dynamic system identification and control have successfully validated the effectiveness of the proposed FARNN in constructing a parsimonious network with superior performance
机译:本文提出了一种全自动的递归神经网络(FARNN),它能够以最小的表示量自构造其网络,并且对于未知的动态系统识别和控制具有令人满意的性能。开发了一种新颖的递归网络,它由一个完全连接的单层神经网络和一个反馈互连的动态网络组成,将未知的动态系统描述为状态空间表示。接下来,设计了一种全自动构造算法,以利用从未知系统的输入-输出测量中捕获的基本动态来构造最小的状态空间表示。该构建算法将最小模型确定,参数初始化和性能优化的方法集成到一个系统框架中,该框架完全免除了网络大小和参数选择上的反复试验过程。在未知非线性动态系统识别和控制的基准示例上进行的计算机仿真已成功验证了所提出的FARNN在构建具有卓越性能的简约网络中的有效性

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