The clustering algorithm for nonlinear system identification

José De Jesús Rubio Avila, Andrés Ferreyra Ramírez, Carlos Avilés-Cruz, Ivan Vazquez-Alvarez

Research output: Contribution to journalArticle

4 Citations (Scopus)

Abstract

A new on-line clustering fuzzy neural network is proposed. In the algorithm, structure and parameter learning are updated at the same time. There is not difference between structure learning and parameter learning. It generates groups with a given radius. The center is updated in order to get that the center is near to the incoming data in each iteration, in this way. It does not need to generate a new rule in each iteration, i.e., it does not generate many rules and it does not need to prune the rules.
Original languageAmerican English
Pages (from-to)1179-1188
Number of pages10
JournalWSEAS Transactions on Computers
StatePublished - 1 Dec 2008
Externally publishedYes

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Fuzzy neural networks
Clustering algorithms
Nonlinear systems
Identification (control systems)

Cite this

Rubio Avila, J. D. J., Ramírez, A. F., Avilés-Cruz, C., & Vazquez-Alvarez, I. (2008). The clustering algorithm for nonlinear system identification. WSEAS Transactions on Computers, 1179-1188.
Rubio Avila, José De Jesús ; Ramírez, Andrés Ferreyra ; Avilés-Cruz, Carlos ; Vazquez-Alvarez, Ivan. / The clustering algorithm for nonlinear system identification. In: WSEAS Transactions on Computers. 2008 ; pp. 1179-1188.
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Rubio Avila, JDJ, Ramírez, AF, Avilés-Cruz, C & Vazquez-Alvarez, I 2008, 'The clustering algorithm for nonlinear system identification', WSEAS Transactions on Computers, pp. 1179-1188.

The clustering algorithm for nonlinear system identification. / Rubio Avila, José De Jesús; Ramírez, Andrés Ferreyra; Avilés-Cruz, Carlos; Vazquez-Alvarez, Ivan.

In: WSEAS Transactions on Computers, 01.12.2008, p. 1179-1188.

Research output: Contribution to journalArticle

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Rubio Avila JDJ, Ramírez AF, Avilés-Cruz C, Vazquez-Alvarez I. The clustering algorithm for nonlinear system identification. WSEAS Transactions on Computers. 2008 Dec 1;1179-1188.