TY - JOUR EP - 734 PB - Tech Science Press SN - 15462218 SP - 717 TI - Generating type 2 trapezoidal fuzzy membership function using genetic tuning N1 - cited By 2 AV - none VL - 71 JF - Computers, Materials and Continua A1 - Khairuddin, S.H. A1 - Hasan, M.H. A1 - Akhir, E.A.P. A1 - Hashmani, M.A. UR - https://www.scopus.com/inward/record.uri?eid=2-s2.0-85118557277&doi=10.32604%2fcmc.2022.020666&partnerID=40&md5=68ff0daf0ccd0c9201a09f8b25d868d3 Y1 - 2022/// ID - scholars17830 KW - Fuzzy inference; Fuzzy systems; Genetic algorithms KW - Certain rule; Footprint of uncertainties; Fuzzy inference systems; Fuzzy logic reasoning; Fuzzy membership function; Genetic tuning; Lateral adjustment; Memberships function; Trapezoidal membership functions; Trapezoidal shape KW - Membership functions N2 - Fuzzy inference system (FIS) is a process of fuzzy logic reasoning to produce the output based on fuzzified inputs. The system starts with identifying input from data, applying the fuzziness to input using membership functions (MF), generating fuzzy rules for the fuzzy sets and obtaining the output. There are several types of inputMFs which can be introduced in FIS, commonly chosen based on the type of real data, sensitivity of certain rule implied and computational limits. This paper focuses on the construction of interval type 2 (IT2) trapezoidal shape MF from fuzzy C Means (FCM) that is used for fuzzification process of mamdani FIS. In the process, upper MF (UMF) and lowerMF (LMF) of theMF need to be identified to get the range of the footprint of uncertainty (FOU). This paper proposes Genetic tuning process, which is a part of genetic algorithm (GA), to adjust parameters in order to improve the behavior of existing system, especially to enhance the accuracy of the system model. This novel process is a hybrid approach which produces Genetic Fuzzy System (GFS) that helps to enhance fuzzy classification problems and performance. The approach provides a new method for the construction and tuning process of the IT2MF, based on the FCM outcomes. The result is compared to Gaussian shape IT2 MF and trapezoid IT2 MF generated by the classicGAmethod. It is shown that the proposed approach is able to outperformthe mentioned benchmarked approaches. Thework implies a wider range of IT2MF types, constructed based on FCM outcomes, and an optimum generation of the FOU so that it can be implemented in practical applications such as prediction, analytics and rule-based solutions. © 2022 Tech Science Press. All rights reserved. IS - 1 ER -