Abstract:
This paper proposes a radial basis functions (RBFs) assisted evolutionary algorithm for solving expensive many-objective problems where only a small number of real fitnes...Show MoreMetadata
Abstract:
This paper proposes a radial basis functions (RBFs) assisted evolutionary algorithm for solving expensive many-objective problems where only a small number of real fitness evaluations are permitted. Two kinds of RBFs are applied in this algorithm, and the differences between the two kinds of RBFs are figured out to provide the estimated errors. By doing this, the estimated individual which has the maximum difference will be evaluated by real functions to strengthen the RBF models. In addition, for each objective, a more suitable RBF is selected for the purpose of making a more accurate approximation of the real functions. The simulation results demonstrate that the proposed algorithm not only performs well on many-objective problems with 10 decision variables, but also shows high efficiency. Besides, the proposed algorithm has good performance on problems with up to 30 decision variables.
Published in: 2020 IEEE Congress on Evolutionary Computation (CEC)
Date of Conference: 19-24 July 2020
Date Added to IEEE Xplore: 03 September 2020
ISBN Information: