This paper investigates the use of genetic algorithms (GA) in the design and implementation of fuzzy logic controllers (FLC)\r\nfor incubating egg. What is the best to determine the membership function is the first question that has been tackled. Thus it is\r\nimportant to select the accurate membership functions, but these methods possess one common weakness where conventional\r\nFLC use membership function generated by human operators. The membership function selection process is done with trial and\r\nerror, and it runs step by step which takes too long in solving the problem. This paper develops a system that may help users to\r\ndetermine the membership function of FLC using the GA optimization for the fastest processing in solving the problems. The\r\ndata collection is based on the simulation results, and the results refer to the transient response specification which is maximum\r\novershoot. From the results presented, we will get a better and exact result; the value of overshot is decreasing from 1.2800 for FLC\r\nwithout GA to 1.0081 with GA (FGA).
Loading....