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Hybrid GMDH-type modeling for nonlinear systems: Synergism to intelligent identification

Authors
Kim, D.Seo, S.-J.Park, G.-T.
Issue Date
2009
Publisher
Elsevier Ltd
Keywords
Heuristic approximation; Hybrid GMDH-type algorithm; Neural networks; SOPNN; System identification
Citation
Advances in Engineering Software, v.40, no.10, pp.1087 - 1094
Indexed
SCOPUS
Journal Title
Advances in Engineering Software
Volume
40
Number
10
Start Page
1087
End Page
1094
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/121920
DOI
10.1016/j.advengsoft.2009.01.029
ISSN
0965-9978
Abstract
This paper presents a novel hybrid GMDH-type algorithm which combines neural networks (NNs) with an approximation scheme (self-organizing polynomial neural network: SOPNN). This composite structure is developed to establish a new heuristic approximation method for identification of nonlinear static systems. NNs have been widely employed to process modeling and control because of their approximation capabilities. And SOPNN is an analysis technique for identifying nonlinear relationships between the inputs and outputs of such systems and builds hierarchical polynomial regressions of required complexity. Therefore, the combined model can harmonize NNs with SOPNN and find a workable synergistic environment. Simulation results of the nonlinear static system are provided to show that the proposed method is much more accurate than other modeling methods. Thus, it can be considered for efficient system identification methodology. © 2009 Elsevier Ltd. All rights reserved.
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