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Adaptive parallel identification of dynamical systems by adaptive recurrent neural networks

机译:自适应递归神经网络的动态系统自适应并行识别

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Under mild regularity conditions, a dynamical system can be approximated to any accuracy by a recurrent neural networks (NN) [J. T. Lo, July 1993]. This universal approximation property qualifies recurrent NNs as system identifiers in the parallel formulations. If a dynamical system under identification is affected by an uncertain environmental parameter, online adjustment of the weights of the system identifier is necessary to adapt to the environmental parameter in the parallel formulation. However, adjusting all the weights of a recurrent NN involves much online computation, poor local minima to fall into, long transient states, and even divergence of the output of the recurrent NN. This motivated and development of adaptive multilayer perceptrons with longand short-term memories (i.e. MLPWINs with long- and short-term memories), which are intended to eliminate all these difficulties. Mathematical justification of adaptive MLPWINs for parallel system identification was reported in (J. T. Lo et al., July 1999). Numerical feasibility of the same studied. Simple dynamical systems selected from three classes of dynamical systems, namely systems with nonlinear actuation, bilinear systems, and systems with bifurcation and chaos, are used in our study. In all three examples, it is shown that adaptive MLPWINs property trained as adaptive parallel identifiers adapt effectively to changing environmental parameters even with values not included in the a priori offline training data.
机译:在适度的规律性条件下,动态系统可以通过递归神经网络(NN)近似到任何精度[J. T. Lo,1993年7月]。这种通用逼近特性使递归神经网络有资格作为并行公式中的系统标识符。如果要识别的动态系统受到不确定的环境参数的影响,则必须在线调整系统标识符的权重以适应并行公式中的环境参数。但是,调整循环NN的所有权重涉及大量在线计算,陷入的局部极小值,较长的瞬态状态以及循环NN的输出甚至发散。具有长期和短期记忆的自适应多层感知器(即具有长期和短期记忆的MLPWIN)的动机和发展,旨在消除所有这些困难。 (J.T.Lo等,1999年7月)报道了用于并行系统识别的自适应MLPWIN的数学证明。数值可行性相同。在我们的研究中,使用了从三类动力学系统中选择的简单动力学系统,即具有非线性致动的系统,具有双线性的系统以及具有分叉和混沌的系统。在所有三个示例中,都显示了训练为自适应并行标识符的自适应MLPWINs属性即使在先验离线训练数据中未包含的值下也可以有效地适应变化的环境参数。

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