In this paper, we propose a dominance-based selection scheme to incorporate constraints into the fitness function of a genetic algorithm used for global optimization. The approach does not require the use of a penalty function and, unlike traditional evolutionary multiobjective optimization techniques, it does not require niching (or any other similar approach) to maintain diversity in the population. We validated the algorithm using several test functions taken from the specialized literature on evolutionary optimization. The results obtained indicate that the approach is a viable alternative to the traditional penalty function, mainly in engineering optimization problems
Genetic Algorithms are most directly suited to unconstrained optimization. Application of Genetic Al...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...
In this paper, we propose a dominance-based selection scheme to incorporate constraints into the fit...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
Abstract. In this paper, we propose a new constraint-handling technique for evolutionary algorithms ...
This paper introduces a method for constrained optimization using a modified multi-objective algorit...
Despite the extended applicability of evolutionary algorithms to a wide range of domains, the fact t...
This paper introduces a method for constrained optimization using a modified multi-objective algorit...
An approach based on a (m+1)-ES and three simple tournament rules is proposed to solve global optimi...
Abstract- Genetic Algorithms are most directly suited to unconstrained optimization. Application of ...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
In this paper, we propose the use of a Simple Evolution Strategy (SES) (i.e., a -ES with self-adapt...
Genetic Algorithms are a common probabilistic optimization method based on the model of natural evol...
In this paper we present an evolutionary algorithm for constrained optimization. The algorithm is ba...
Genetic Algorithms are most directly suited to unconstrained optimization. Application of Genetic Al...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...
In this paper, we propose a dominance-based selection scheme to incorporate constraints into the fit...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
Abstract. In this paper, we propose a new constraint-handling technique for evolutionary algorithms ...
This paper introduces a method for constrained optimization using a modified multi-objective algorit...
Despite the extended applicability of evolutionary algorithms to a wide range of domains, the fact t...
This paper introduces a method for constrained optimization using a modified multi-objective algorit...
An approach based on a (m+1)-ES and three simple tournament rules is proposed to solve global optimi...
Abstract- Genetic Algorithms are most directly suited to unconstrained optimization. Application of ...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
In this paper, we propose the use of a Simple Evolution Strategy (SES) (i.e., a -ES with self-adapt...
Genetic Algorithms are a common probabilistic optimization method based on the model of natural evol...
In this paper we present an evolutionary algorithm for constrained optimization. The algorithm is ba...
Genetic Algorithms are most directly suited to unconstrained optimization. Application of Genetic Al...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...