The file attached to this record is the author's final peer reviewed version. The Publisher's final version can be found by following the DOI link.The difficulty of solving constrained multi-objective optimization problems (CMOPs) using evolutionary algorithms is to balance constraint satisfaction and objective optimization while fully considering the diversity of the solution set. Many CMOPs with disconnected feasible subregions make it difficult for algorithms to search for all feasible nondominated solutions. To address these issues, we propose a population state detection strategy (PSDS) and a restart scheme to determine whether the environmental selection strategy needs to be changed based on the situation of population. When the popul...
This paper proposes a constrained solution update strategy for multiobjective evolutionary algorithm...
Abstract Different strategies for defining the relationship between feasible and infeasible individu...
This article proposes a simple yet effective multiobjective evolutionary algorithm (EA) for dealing ...
It is challenging to balance convergence and diversity in constrained multi-objective optimization p...
With the increase in the number of optimization objectives, balancing the convergence and diversity ...
Both objective optimization and constraint satisfaction are crucial for solving constrained multi-ob...
This paper presents an improved version of a simple evolution strategy (SES) to solve global nonlin...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Abstract—This paper presents a novel evolutionary algorithm for constrained optimization. During the...
The paper follows the line of the design and evaluation of new evolutionary algorithms for constrain...
To solve dynamic optimization problems, multiple population methods are used to enhance the populati...
The multi-population method has been widely used to solve unconstrained continuous dynamic optimizat...
Tian Y, Zhang Y, Su Y, Zhang X, Tan KC, Jin Y. Balancing Objective Optimization and Constraint Satis...
To solve dynamic optimization problems, multiple population methods are used to enhance the populati...
Constrained optimization is a challenging area of research in the science and engineering discipline...
This paper proposes a constrained solution update strategy for multiobjective evolutionary algorithm...
Abstract Different strategies for defining the relationship between feasible and infeasible individu...
This article proposes a simple yet effective multiobjective evolutionary algorithm (EA) for dealing ...
It is challenging to balance convergence and diversity in constrained multi-objective optimization p...
With the increase in the number of optimization objectives, balancing the convergence and diversity ...
Both objective optimization and constraint satisfaction are crucial for solving constrained multi-ob...
This paper presents an improved version of a simple evolution strategy (SES) to solve global nonlin...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Abstract—This paper presents a novel evolutionary algorithm for constrained optimization. During the...
The paper follows the line of the design and evaluation of new evolutionary algorithms for constrain...
To solve dynamic optimization problems, multiple population methods are used to enhance the populati...
The multi-population method has been widely used to solve unconstrained continuous dynamic optimizat...
Tian Y, Zhang Y, Su Y, Zhang X, Tan KC, Jin Y. Balancing Objective Optimization and Constraint Satis...
To solve dynamic optimization problems, multiple population methods are used to enhance the populati...
Constrained optimization is a challenging area of research in the science and engineering discipline...
This paper proposes a constrained solution update strategy for multiobjective evolutionary algorithm...
Abstract Different strategies for defining the relationship between feasible and infeasible individu...
This article proposes a simple yet effective multiobjective evolutionary algorithm (EA) for dealing ...