English

Feasibility Preserving Constraint-Handling Strategies for Real Parameter Evolutionary Optimization

Neural and Evolutionary Computing 2015-04-20 v1

Abstract

Evolutionary Algorithms (EAs) are being routinely applied for a variety of optimization tasks, and real-parameter optimization in the presence of constraints is one such important area. During constrained optimization EAs often create solutions that fall outside the feasible region; hence a viable constraint- handling strategy is needed. This paper focuses on the class of constraint-handling strategies that repair infeasible solutions by bringing them back into the search space and explicitly preserve feasibility of the solutions. Several existing constraint-handling strategies are studied, and two new single parameter constraint-handling methodologies based on parent-centric and inverse parabolic probability (IP) distribution are proposed. The existing and newly proposed constraint-handling methods are first studied with PSO, DE, GAs, and simulation results on four scalable test-problems under different location settings of the optimum are presented. The newly proposed constraint-handling methods exhibit robustness in terms of performance and also succeed on search spaces comprising up-to 500 variables while locating the optimum within an error of 1010^{-10}. The working principle of the IP based methods is also demonstrated on (i) some generic constrained optimization problems, and (ii) a classic `Weld' problem from structural design and mechanics. The successful performance of the proposed methods clearly exhibits their efficacy as a generic constrained-handling strategy for a wide range of applications.

Keywords

Cite

@article{arxiv.1504.04421,
  title  = {Feasibility Preserving Constraint-Handling Strategies for Real Parameter Evolutionary Optimization},
  author = {Nikhil Padhye and Pulkit Mittal and Kalyanmoy Deb},
  journal= {arXiv preprint arXiv:1504.04421},
  year   = {2015}
}
R2 v1 2026-06-22T09:17:41.866Z