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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Identification of Nonlinear Spatiotemporal Dynamical Systems With Nonuniform Observations Using Reproducing-Kernel-Based Integral Least Square Regulation
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Identification of Nonlinear Spatiotemporal Dynamical Systems With Nonuniform Observations Using Reproducing-Kernel-Based Integral Least Square Regulation

机译:基于再现核的积分最小二乘规则的非均匀观测非线性时空动力系统辨识

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摘要

The identification of nonlinear spatiotemporal dynamical systems given by partial differential equations has attracted a lot of attention in the past decades. Several methods, such as searching principle-based algorithms, partially linear kernel methods, and coupled lattice methods, have been developed to address the identification problems. However, most existing methods have some restrictions on sampling processes in that the sampling intervals should usually be very small and uniformly distributed in spatiotemporal domains. These are actually not applicable for some practical applications. In this paper, to tackle this issue, a novel kernel-based learning algorithm named integral least square regularization regression (ILSRR) is proposed, which can be used to effectively achieve accurate derivative estimation for nonlinear functions in the time domain. With this technique, a discretization method named inverse meshless collocation is then developed to realize the dimensional reduction of the system to be identified. Thereafter, with this novel inverse meshless collocation model, the ILSRR, and a multiple-kernel-based learning algorithm, a multistep identification method is systematically proposed to address the identification problem of spatiotemporal systems with pointwise nonuniform observations. Numerical studies for benchmark systems with necessary discussions are presented to illustrate the effectiveness and the advantages of the proposed method.
机译:在过去的几十年中,偏微分方程给出的非线性时空动力系统的识别引起了很多关注。为了解决识别问题,已经开发了几种方法,例如基于搜索原理的算法,部分线性核方法和耦合晶格方法。但是,大多数现有方法对采样过程都有一些限制,因为采样间隔通常应该非常小,并且在时空域中均匀分布。这些实际上不适用于某些实际应用。针对这一问题,本文提出了一种基于核的学习算法,称为积分最小二乘正则化回归算法,可以有效地实现时域非线性函数的精确导数估计。利用该技术,然后开发了一种称为逆无网格配置的离散化方法,以实现待识别系统的降维。此后,利用这种新颖的逆无网格搭配模型,ILSRR和基于多核的学习算法,系统地提出了一种多步识别方法,以解决逐点非均匀观测的时空系统的识别问题。介绍了基准系统的数值研究,并进行了必要的讨论,以说明该方法的有效性和优势。

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