Intelligent reconfigurable universal fuzzy flip-flop
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概要
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In this paper a universal fuzzy flip-flop is proposed that can be reconfigured as a fuzzy SR, D, JK, or T flip-flop. When integrated with a multi layer neural network, the resulting reconfigurable fuzzy-neural structure showed excellent learning ability. The sigmoid activation function of neurons in the hidden layers of the multilayer neural network was replaced by the quasi-sigmoidal transfer characteristics of the universal fuzzy flip-flop in the reconfigurable fuzzy-neural structure. Experimental results showed that the reconfigurable fuzzy-neural structure can be effectively trained using either a large or sparse set of data points to closely approximate nonlinear input functions.
著者
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Koshak Essam
Lane Department of Computer Science and Electrical Engineering West Virginia University
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Noore Afzel
Lane Department of Computer Science and Electrical Engineering West Virginia University
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Lovassy Rita
Institute of Microelectronics and Technology, Óbuda University