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Intelligent Engineering Systems through Artificial Neural NetworksAvailable to Purchase
ISBN:
9780791802953
No. of Pages:
636
Publisher:
ASME Press
Publication date:
2009
eBook Chapter
66 Ensemble Neural Networks with Fuzzy Integration for Complex Time Series Prediction Available to Purchase
By
Martha Elena Pulido
,
Martha Elena Pulido
Division of Graduate Studies
Instituto Tecnológico de Tijuana
Tijuana, B.C.
Mexico
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Alejandra Mancilla
,
Alejandra Mancilla
Division of Graduate Studies
Instituto Tecnológico de Tijuana
Tijuana, B.C.
Mexico
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Oscar Castillo
Oscar Castillo
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Page Count:
8
-
Published:2009
Citation
Pulido, ME, Mancilla, A, Melin, P, & Castillo, O. "Ensemble Neural Networks with Fuzzy Integration for Complex Time Series Prediction." Intelligent Engineering Systems through Artificial Neural Networks. Ed. Dagli, CH, Bryden, KM, Corns, SM, Gen, M, Tumer, K, & Süer, G. ASME Press, 2009.
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In this paper we describe the application of an architecture for an ensemble neural network for Complex Time Series Prediction. The time series we are considering is the Mackey-Glass, and we show the results of some trainings with the ensemble neural network, and its integration with the methods of average, weighted average and Fuzzy Integration. Simulation results show very good prediction of the ensemble neural network with fuzzy integration.
Abstract
Introduction
Time Series and Prediction
Genetic Algorithms
Problem Statement and Proposed Method
Simulation Results
Conclusions
References
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