A new learning approach for Takagi-Sugeno fuzzy systems applied to time series prediction

04 Pubblicazione in atti di convegno
Altilio Rosa, Rosato Antonello, Panella Massimo
ISSN: 1544-5615

In this paper, we present a study on the use of fuzzy neural networks and their application to the prediction of times series generated by complex processes of the real-world. The new learning strategy is suited to any fuzzy inference model, especially in the case of higher-order Sugeno-type fuzzy rules. The data considered herein are real-world cases concerning chaotic benchmarks as well as environmental time series. The comparison with respect to well-known neural and fuzzy neural models will prove that our approach is able to follow the behavior of the underlying, unknown process with a good prediction of the observed time series.

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