Most neuro-fuzzy systems proposed in the past decade employ "engineering implications" defined by a t-norm, e.g. the minimum or the product. We apply a new class of operators called quasi-triangular norms for the construction of neuro-fuzzy systems. These operators depend on a certain parameter /spl nu/ and change their functional forms between a t-norm and a t-conorm. Consequently, the structure of neuro-fuzzy systems presented in the paper is determined in the process of learning. Learning procedures are derived and simulation examples are presented.
Leszek RutkowskiKrzysztof Cpałka
Marcin KorytkowskiRafał Scherer
Krystian ŁapaKrzysztof CpałkaLipo Wang
Krzysztof CpałkaLeszek Rutkowski
Marcin GabryelMarcin KorytkowskiAgata PokropińskaRafał SchererStanisław Drozda