Abstract: The use of genetic algorithms (GAs) to solve combinatorial optimization problems often produces a population of infeasible solutions because of optimization problem constraints. A solution pool with a large number of infeasible solutions results in poor search performance of a GA, or worse, the algorithm ceases to run. In such cases, the methods of penalty function and multi-objective optimization can help GAs run to some extent. However, these methods prevent infeasible solutions from surviving in the solutions pool. Infeasible solutions, particularly those that are produced after several generations, exhibit some achievements in evolutionary computation. They should serve as a positive function in the process of evolution instea...
A genetic algorithm is a technique designed to search large problem spaces using the Darwinian conce...
Real-world optimisation problems are often subject to constraints that must be satisfied by the opti...
Practical optimization problems often have multiple objectives, which are likely to conflict with ea...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
Decision making features occur in all fields of human activities such as science and technological a...
Today, many complex multiobjective problems are dealt with using genetic algorithms (GAs). They appl...
The combinatorial optimization problem always is ubiquitous in various applications and has been pro...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
This paper presents an application of genetic algorithms (GAs) to a well-known traveling salesman pr...
A genetic algorithm approach suitable for solving multi-objective optimization problems is described...
Most real world optimization problems, and their corresponding models, are complex. This complexity ...
AbstractToday, Genetic algorithm plays vital role in solving tough optimization problems with constr...
Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used ...
Evolutionary Algorithms started in the 1950's with [Fra57] and [Box57]. They form a powerful fa...
A genetic algorithm is a technique designed to search large problem spaces using the Darwinian conce...
Real-world optimisation problems are often subject to constraints that must be satisfied by the opti...
Practical optimization problems often have multiple objectives, which are likely to conflict with ea...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
Decision making features occur in all fields of human activities such as science and technological a...
Today, many complex multiobjective problems are dealt with using genetic algorithms (GAs). They appl...
The combinatorial optimization problem always is ubiquitous in various applications and has been pro...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
This paper presents an application of genetic algorithms (GAs) to a well-known traveling salesman pr...
A genetic algorithm approach suitable for solving multi-objective optimization problems is described...
Most real world optimization problems, and their corresponding models, are complex. This complexity ...
AbstractToday, Genetic algorithm plays vital role in solving tough optimization problems with constr...
Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used ...
Evolutionary Algorithms started in the 1950's with [Fra57] and [Box57]. They form a powerful fa...
A genetic algorithm is a technique designed to search large problem spaces using the Darwinian conce...
Real-world optimisation problems are often subject to constraints that must be satisfied by the opti...
Practical optimization problems often have multiple objectives, which are likely to conflict with ea...