In this paper it is presented an approach to improve the interpretability of a neuro-fuzzy system. This improvement is achieved through the modification of the Sugeno form of the consequent polynomials into corresponding triangular membership functions. The resulting neuro-fuzzy inference system has the same performance as the initial one and is an extension to our already published neuro-fuzzy architecture. This architecture has been used in the classification and control applications. In simulation, the proposed approach is applied after the corresponding neuro-fuzzy model of a non-linear function is obtained. A helicopter motion controller model was used as the non-linear function. The increase of interpretability of the controller shows the effectiveness of the proposed approach.
Rui Pedro PaivaAntónio Dourado
Krystian ŁapaKrzysztof CpałkaLipo Wang
Miguel Ángel VélezOmar SánchezSixto Romero SánchezJosé Manuel Andújar