Constrained optimization problems (COPs) are very important in that they frequently appear in the real world. A COP, in which both the function and constraints may be nonlinear, consists of the optimization of a function subject to constraints. Constraint handling is one of the major concerns when solving COPs with particle swarm optimization (PSO) combined with the Nelder–Mead simplex search method (NM-PSO). This article proposes embedded constraint handling methods, which include the gradient repair method and constraint fitness priority-based ranking method, as a special operator in NM-PSO for dealing with constraints. Experiments using 13 benchmark problems are explained and the NM-PSO results are compared with the best known solutions reported in the literature. Comparison with three different meta-heuristics demonstrates that NM-PSO with the embedded constraint operator is extremely effective and efficient at locating optimal solutions.
Leticia CagninaSusana Cecilia EsquivelCarlos A. Coello Coello
Konstantinos E. ParsopoulosMichael N. Vrahatis
Chaoli SunJianchao ZengShu‐Chuan ChuJohn F. RoddickJeng‐Shyang Pan
Millie PantRadha ThangarajAjith Abraha