Hybrid radial-basis neuro-fuzzy wavelon in the non-stationary sequences forecasting problems. Bodyanskiy Yevgeniy, Vynokurova Olena

Abstract. Architecture of hybrid radial-basis neuro-fuzzy wavelon with adaptive membership-acivation function is considered. The learning algorithm for the all parameters of hybrid wavelon, providing the improvement of approximating properties that it check out the results of experimental simulation is proposed. This hybrid vavelon can be used as the node in the group method of data handling (GMDH) neural networks instead of the nonlinear adaline.

Keywords. Artifcial neural networks, computational intelligence, radial-basis neuro-fuzzy wavelon, wavelet theory, GMDH neural networks. .

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Last modified by Oleksiy on 10/15/08 04:51:55 (22 months ago)

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