numerical solution of fuzzy differential equations under generalized differentiability by fuzzy neural network
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abstract
in this paper, we interpret a fuzzy differential equation by using the strongly generalized differentiability concept. utilizing the generalized characterization theorem. then a novel hybrid method based on learning algorithm of fuzzy neural network for the solution of differential equation with fuzzy initial value is presented. here neural network is considered as a part of large eld called neural computing or soft computing. the model nds the approximated solution of fuzzy differential equation inside of its domain for the close enough neighborhood of the fuzzy initial point. we propose a learning algorithm from the cost function for adjusting of fuzzy weights.
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Journal title:
international journal of industrial mathematicsجلد ۵، شماره ۴، صفحات ۲۸۱-۲۹۷
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