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Improvement of generalization ability for identifying dynamic systems by using universal learning networks

机译:通过使用通用学习网络提高识别动态系统的泛化能力

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This paper studies how the generalization ability of models of dynamic systems can be improved by taking advantages of the second order derivatives of the outputs of networks with respect to the external inputs. The proposed method can be regarded as a direct implementation of the well-known regularization technique using the higher order derivatives of the universal learning networks (ULNs). ULNs consist of a number of interconnected nodes where the nodes may have any continuously differentiable nonlinear functions in them and each pair of nodes can be connected by multiple branches with arbitrary time delays. A generalized learning algorithm has been derived for the ULNs, in which both the first order derivatives (gradients) and the higher order derivatives are incorporated. The method for computing the second order derivatives of ULNs is discussed. A new method for implementing the regularization term is presented. Finally, simulation studies on identification of a nonlinear dynamic system with noises were carried out to demonstrate the effectiveness of the proposed method.
机译:本文研究了如何通过利用网络输出相对于外部输入的二阶导数的优势来提高动态系统模型的泛化能力。所提出的方法可以看作是使用通用学习网络(ULN)的高阶导数的众所周知的正则化技术的直接实现。 ULN由多个相互连接的节点组成,其中节点中可以具有任何连续可区分的非线性函数,并且每对节点可以通过具有任意时间延迟的多个分支进行连接。已经为ULN导出了一种通用的学习算法,其中结合了一阶导数(梯度)和高阶导数。讨论了计算ULN的二阶导数的方法。提出了一种实现正则化项的新方法。最后,对识别带有噪声的非线性动力系统进行了仿真研究,以证明该方法的有效性。

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