作者
Andrés Mejías, Sixto Romero, Francisco J Moreno
发表日期
2009
研讨会论文
International Symposium on Distributed Computing and Artificial Intelligence 2008 (DCAI 2008)
页码范围
452-460
出版商
Springer Berlin Heidelberg
简介
In this paper we present a complete design methodology to obtain a fuzzy model with an Adaptive Neuro Fuzzy Inference System (ANFIS). This methodology consists of three phases: In phase I, the automatic selection of input variables and other parameters such as number and type of membership functions is made with a Genetic Algorithm with a special fitness function, obtaining a basic structure of the fuzzy model. The second phase is a massive training of the fuzzy model previously obtained. Finally, the third phase is a post-adjusting of the weights of the rules with a local search algorithm, based on an adjusted fitness function from the first phase. An application of the proposed design method for the gas-furnace time series, a well-known benchmark dataset used by many researchers in the area of neural networks and fuzzy systems is presented, and finally, we present a comparative with other Box …
引用总数
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