Obtaining Membership Functions from a Neuron Fuzzy System extended by Kohonen Network

Computer Science – Neural and Evolutionary Computing

Scientific paper

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6 pages, 6 figures, 5th Congress of Logic Applied to Technology (LAPTEC 2005) Himeji, Japan, April 2-6, 2005

Scientific paper

This article presents the Neo-Fuzzy-Neuron Modified by Kohonen Network (NFN-MK), an hybrid computational model that combines fuzzy system technique and artificial neural networks. Its main task consists in the automatic generation of membership functions, in particular, triangle forms, aiming a dynamic modeling of a system. The model is tested by simulating real systems, here represented by a nonlinear mathematical function. Comparison with the results obtained by traditional neural networks, and correlated studies of neurofuzzy systems applied in system identification area, shows that the NFN-MK model has a similar performance, despite its greater simplicity.

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