Title :
Evolutionary Programming for High-Dimensional Constrained Expensive Black-Box Optimization Using Radial Basis Functions
Author :
Regis, Rommel G.
Author_Institution :
Dept. of Math., St. Joseph´s Univ., Philadelphia, PA, USA
Abstract :
This paper develops a surrogate-assisted evolutionary programming (EP) algorithm for constrained expensive black-box optimization that can be used for high-dimensional problems with many black-box inequality constraints. The proposed method does not use a penalty function and it builds surrogates for the objective and constraint functions. Each parent generates a large number of trial offspring in each generation. Then, the surrogate functions are used to identify the trial offspring that are predicted to be feasible with the best predicted objective function values or those with the minimum number of predicted constraint violations. The objective and constraint functions are then evaluated only on the most promising trial offspring from each parent, and the method proceeds in the same way as in a standard EP. In the numerical experiments, the type of surrogate used to model the objective and each of the constraint functions is a cubic radial basis function (RBF) augmented by a linear polynomial. The resulting RBF-assisted EP is applied to 18 benchmark problems and to an automotive problem with 124 decision variables and 68 black-box inequality constraints. The proposed method is much better than a traditional EP, a surrogate-assisted penalty-based EP, stochastic ranking evolution strategy, scatter search, and CMODE, and it is competitive with ConstrLMSRBF on the problems used.
Keywords :
evolutionary computation; mathematics computing; optimisation; radial basis function networks; CMODE; ConstrLMSRBF; RBF; automotive problem; black-box inequality constraints; constraint functions; cubic radial basis function; evolutionary programming; high-dimensional constrained expensive black-box optimization; high-dimensional problems; objective functions; predicted constraint violations; scatter search; stochastic ranking evolution strategy; surrogate functions; surrogate-assisted evolutionary programming algorithm; surrogate-assisted penalty-based EP; trial offspring identifcation; Black-box optimization; Constrained Optimization; Evolutionary programming; Highdimensional optimization; Radial basis functions; Surrogateassisted evolutionary algorithms; constrained optimization; evolutionary programming; high-dimensional optimization; radial basis functions; surrogate-assisted evolutionary algorithms;
Journal_Title :
Evolutionary Computation, IEEE Transactions on
DOI :
10.1109/TEVC.2013.2262111