Abstract
This paper underlines a way to evolve a generalized fuzzy model (GFM), using the interpolation of CRI and TS models in their consequent parts of fuzzy rules. The GFM possesses the index of fuzziness of CRI model and the local model of the TS model. The parameters of the GFM are estimated by a two-step process. The consequent part of fuzzy rules is reformulated to suit the LSE framework for estimating the associated parameters. By assuming Generalized Gaussian membership function for the premise parts, Gradient descent technique is used to update its parameters. The performance of two classes of GFM has been tested on two systems and it is shown that class II GFM is the best out of all the fuzzy models tested.
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Azeem, M., Hanmandlu, M. & Ahmad, N. Parameter determination for a generalized fuzzy model. Soft Comput 9, 211–221 (2005). https://doi.org/10.1007/s00500-003-0345-4
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DOI: https://doi.org/10.1007/s00500-003-0345-4