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A Novel Soft Computing Technique for the Shortcoming of the Polynomial Neural Network  

Kim, Dongwon (Department of Electrical Engineering, Korea University)
Huh, Sung-Hoe (Department of Electrical Engineering, Korea University)
Seo, Sam-Jun (Department of Electrical and Electronic Engineering, Anyang University)
Park, Gwi-Tae (Department of Electrical Engineering, Korea University)
Publication Information
International Journal of Control, Automation, and Systems / v.2, no.2, 2004 , pp. 189-200 More about this Journal
Abstract
In this paper, we introduce a new soft computing technique that dwells on the ideas of combining fuzzy rules in a fuzzy system with polynomial neural networks (PNN). The PNN is a flexible neural architecture whose structure is developed through the modeling process. Unfortunately, the PNN has a fatal drawback in that it cannot be constructed for nonlinear systems with only a small amount of input variables. To overcome this limitation in the conventional PNN, we employed one of three principal soft computing components such as a fuzzy system. As such, a space of input variables is partitioned into several subspaces by the fuzzy system and these subspaces are utilized as new input variables to the PNN architecture. The proposed soft computing technique is achieved by merging the fuzzy system and the PNN into one unified framework. As a result, we can find a workable synergistic environment and the main characteristics of the two modeling techniques are harmonized. Thus, the proposed method alleviates the problems of PNN while providing superb performance. Identification results of the three-input nonlinear static function and nonlinear system with two inputs will be demonstrated to demonstrate the performance of the proposed approach.
Keywords
Fuzzy system; nonlinear system modeling; soft computing technique; unified framework; polynomial neural network.;
Citations & Related Records

Times Cited By Web Of Science : 3  (Related Records In Web of Science)
Times Cited By SCOPUS : 1
연도 인용수 순위
1 Polynomial theory of complex systems /
[ A. G. Ivakhnenko ] / IEEE Trans. on Syst. Man Cybern.
2 Identification of the mathematical model of a complex system by the selforganization method /
[ A. G. Ivakhnenko;G. I. Krotov;N. A. Ivakhnenko;E. Halfon(ed.) ] / Theoretical Systems Ecology: Advance and Case Studies
3 Longterm prediction by GMDH algorithms using the unbiased criterion and the balance-of-variables criterion /
[ A. G. Ivakhnenko;N. A. Ivakhnenko ] / Sov. Automat. Contr.
4 Longterm prediction by GMDH algorithms using the unbiased criterion and the balance-of-variables criterion, part2 /
[ A. G. Ivakhnenko;N. A. Ivakhnenko ] / Sov. Automat. Contr.
5 /
[ S. J. Farlow ] / Self-Organizing Methods in Modeling, GMDH Type-Algorithms
6 A study on the optimal design of polynomial neural networks structure /
[ S. K. Oh;D. W. Kim;B. J. Park ] / Trans. KIEE
7 The design of self-organizing polynomial neural networks /
[ S. K. Oh;W. Pedrycz ] / Inf. Sci.   DOI
8 ANFIS: Adaptive-networks-based fuzzy inference system /
[ J. S. Jang ] / IEEE Trans. on Syst. Man. Cybern.   DOI   ScienceOn
9 A fuzzy-logic-based approach to qualitative modeling /
[ M. Sugeno;T. Yasukawa ] / IEEE Trans. on Fuzzy Syst.   DOI   ScienceOn
10 A study on the self-organizing fuzzy polynomial neural networks /
[ D. W. Kim;S. K. Oh;H. K. Kim ] / Journal of KIEE
11 Structure identification of fuzzy model /
[ M. Sugeno;G. T. Kang ] / Fuzzy Sets Syst.   DOI   ScienceOn
12 Revised GMDH algorithm estimating degree of the complete polynomial /
[ T. Kondo ] / Tran. Soc. Instrum. Control Eng.
13 About the use of fuzzy clustering techniques for fuzzy model identification /
[ A. F. Gomez-Skarmeta;M. Delgado;M. A. Vila ] / Fuzzy Sets Syst.   DOI   ScienceOn
14 A fast approach for automatic generation of fuzzy rules by generalized dynamic fuzzy neural networks /
[ S. Wu;M. J. Er;Y. Gao ] / IEEE Trans. on Fuzzy Syst.   DOI   ScienceOn
15 Evolutionary Design of Self-organizing Polynomial Neural Networks /
[ D. W. Kim ] / Master's thesis, Dept. Control Instrum., Wonkwang Univ.
16 A simply identified Sugeno-type fuzzy model via double clustering /
[ E. Kim;H. Lee;M. Park;M. Park ] / Inf. Sci.   DOI
17 NN-driven fuzzy reasoning /
[ H. Takagi;I, Hayashi ] / Int. J. Approx. Reasoning   DOI   ScienceOn
18 Linguistic fuzzy model identification /
[ H. S. Hwang;K. B. Woo ] / IEE Proc.-Control Theory Appl.   DOI   ScienceOn
19 A new approach to fuzzy-neural system modeling /
[ Y. Lin;G. A. Cunningham III ] / IEEE Trans. on Fuzzy Syst.   DOI   ScienceOn
20 /
[ J. S. Jang;C. T. Sun;E. Mizutani ] / Neuro-Fuzzy AND Soft Computing: A Computational Approach to Learning and Machine Intelligence
21 Combination of fuzzy rule based model and self-organizing approximator technique:a new approach to nonlinear system modeling /
[ D. W. Kim;J. H. Park;G. T. Park ] / Proc. of Fuzz-IEEE
22 Hybrid architecture of the neural networks and self-organizing approximator technique: a new approach to nonlinear system modeling /
[ D. W. Kim;G. T. Park ] / Proc. of IEEE Int. Conf. Syst. Man. Cybern
23 Fuzzy polynomial neural network: hybrid architectures of fuzzy modeling /
[ B. J. Park;W. Pedrycz;S. K. Oh ] / IEEE Trans. on Fuzzy Syst.   DOI   ScienceOn
24 On fuzzy modeling using fuzzy neural networks with the back-propagation algorithm /
[ S. I. Horikawa ] / IEEE Trans. on Neural Netw.   DOI   ScienceOn
25 A new approach to fuzzy modeling /
[ E. T. Kim;M. K. Park;S. H. Ji;M. Park ] / IEEE Trans. on Fuzzy Syst.   DOI   ScienceOn