DocumentCode
1279629
Title
Online Identification of Nonlinear Spatiotemporal Systems Using Kernel Learning Approach
Author
Ning, Hanwen ; Jing, Xingjian ; Cheng, Li
Author_Institution
Dept. of Mech. Eng., Hong Kong Polytech. Univ., Kowloon, China
Volume
22
Issue
9
fYear
2011
Firstpage
1381
Lastpage
1394
Abstract
The identification of nonlinear spatiotemporal systems is of significance to engineering practice, since it can always provide useful insight into the underlying nonlinear mechanism and physical characteristics under study. In this paper, nonlinear spatiotemporal system models are transformed into a class of multi-input-multi-output (MIMO) partially linear systems (PLSs), and an effective online identification algorithm is therefore proposed by using a pruning error minimization principle and least square support vector machines. It is shown that many benchmark physical and engineering systems can be transformed into MIMO-PLSs which keep some important physical spatiotemporal relationships and are very helpful in the identification and analysis of the underlying system. Compared with several existing methods, the advantages of the proposed method are that it can make full use of some prior structural information about system physical models, can realize online estimation of the system dynamics, and achieve accurate characterization of some important nonlinear physical characteristics of the system. This would provide an important basis for state estimation, control, optimal analysis, and design of nonlinear distributed parameter systems. The proposed algorithm can also be applied to identification problems of stochastic spatiotemporal dynamical systems. Numeral examples and comparisons are given to demonstrate our results.
Keywords
MIMO systems; learning (artificial intelligence); least squares approximations; linear systems; support vector machines; kernel learning approach; least square support vector machines; multi-input-multi-output partially linear systems; nonlinear distributed parameter systems; nonlinear spatiotemporal systems; online identification; state estimation; stochastic spatiotemporal dynamical systems; Computational modeling; Kernel; Lattices; MIMO; Mathematical model; Spatiotemporal phenomena; Support vector machines; Lattice dynamics; least squares support vector machines; nonlinear system identification; partially linear systems; spatiotemporal systems; Algorithms; Artificial Intelligence; Computer Simulation; Humans; Nonlinear Dynamics; Online Systems;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2011.2161331
Filename
5959989
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