Abstract:
Handling nonlinear constraints in continuous optimization is challenging, and finding a feasible solution is usually a difficult task. In the past few decades, various te...Show MoreMetadata
Abstract:
Handling nonlinear constraints in continuous optimization is challenging, and finding a feasible solution is usually a difficult task. In the past few decades, various techniques have been developed to deal with linear and nonlinear constraints. However, reaching feasible solutions has been a challenging task for most of these methods. In this article, we adopt the framework of estimation of distribution algorithms (EDAs) and propose a new algorithm (EDA++) equipped with some mechanisms to deal with nonlinear constraints. These mechanisms are associated with different stages of the EDA, including seeding, learning, and mapping. It is shown that, besides increasing the quality of the solutions in terms of objective values, the feasibility of the final solutions is guaranteed if an initial population of feasible solutions is seeded to the algorithm. The EDA with the proposed mechanisms is applied to two suites of benchmark problems for constrained continuous optimization and its performance is compared with some state-of-the-art algorithms and constraint-handling methods. Conducted experiments confirm the speed, robustness, and efficiency of the proposed algorithm in tackling various problems with linear and nonlinear constraints.
Published in: IEEE Transactions on Evolutionary Computation ( Volume: 26, Issue: 5, October 2022)
Funding Agency:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Constrained Optimization ,
- Estimation Of Distribution Algorithm ,
- Benchmark ,
- Feasible Solution ,
- Objective Value ,
- Linear Constraints ,
- Nonlinear Constraints ,
- Population Of Solutions ,
- Optimization Problem ,
- Objective Function ,
- Optimization Process ,
- Probabilistic Model ,
- Gaussian Model ,
- Inequality Constraints ,
- Particle Swarm Optimization ,
- Mixture Components ,
- Equality Constraints ,
- Feasible Set ,
- Gaussian Mixture Model ,
- Bisection ,
- Constrained Optimization Problem ,
- Infeasible Solutions ,
- Constraint Violation ,
- Types Of Constraints ,
- Deterministic Function ,
- Half Of The Distance ,
- Gaussian Mixture Distribution ,
- Pareto Set ,
- Normal Distribution ,
- Variable Radius
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Constrained Optimization ,
- Estimation Of Distribution Algorithm ,
- Benchmark ,
- Feasible Solution ,
- Objective Value ,
- Linear Constraints ,
- Nonlinear Constraints ,
- Population Of Solutions ,
- Optimization Problem ,
- Objective Function ,
- Optimization Process ,
- Probabilistic Model ,
- Gaussian Model ,
- Inequality Constraints ,
- Particle Swarm Optimization ,
- Mixture Components ,
- Equality Constraints ,
- Feasible Set ,
- Gaussian Mixture Model ,
- Bisection ,
- Constrained Optimization Problem ,
- Infeasible Solutions ,
- Constraint Violation ,
- Types Of Constraints ,
- Deterministic Function ,
- Half Of The Distance ,
- Gaussian Mixture Distribution ,
- Pareto Set ,
- Normal Distribution ,
- Variable Radius
- Author Keywords