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Recurrent neural networks for synthesizing linear control systems via pole placement

机译:经常性的神经网络通过杆放置合成线性控制系统

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Recurrent neural networks are proposed for synthesizing linear control systems through pole placement. The proposed neural networks approach uses two coupled recurrent neural networks for computing feedback gain matrix. Each neural network consists of two bidirectionally connected layers and each layer consists of an array of neurons. The proposed recurrent neural networks are shown to be capable of synthesizing linear control systems in real time. The operating characteristics of the recurrent neural networks and closed-loop systems are demonstrated by use of two illustrative examples.
机译:提出了通过杆放置来合成线性控制系统的经常性神经网络。所提出的神经网络方法使用两个耦合的复发性神经网络来计算反馈增益矩阵。每个神经网络由两个双向连接的层组成,每个层由一系列神经元组成。所提出的经常性神经网络被证明能够实时合成线性控制系统。通过使用两个说明性实施例,证明了经常性神经网络和闭环系统的操作特性。

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