Real world problems are often of dynamic nature. They form a class of difficult problems that meta-heuristics aim to solve. The goal is not only to attempt to find near-to optimal solutions for a de-fined objective function, but also to track them in the search space. We will discuss in this article the dynamic optimization in the continuous case. Then we will present the experimentation on a battery of test functions, specially tuned for that purpose, of our ant colony algorithm, DHCIAC (Dynamic Hy-brid Continuous Interacting Ant Colony)
Ant colony algorithm is a heuristic algorithm which is fit for solving complicated combination opt...
AbstractResearch on a new metaheuristic for optimization is often initially focused on proof-of-conc...
In recent years Ant Colony Optimisation (ACO) algorithms have been applied to more challenging and c...
Ant colony algorithms are a class of metaheuristics which are inspired from the behaviour of real an...
Ant colony optimization is a swarm intelligence metaheuristic inspired by the foraging behavior of s...
The ant colony optimization (ACO) metaheuristic was inspired from the foraging behaviour of real ant...
Ant colony optimization (ACO) algorithms are computational problem-solving methods that are inspired...
This book is an updated effort in summarizing the trending topics and new hot research lines in solv...
An ant colony optimization framework has been compared and shown to be a viable alternative approach...
There exist a number of algorithms that can solve dynamic constraint satisfaction/optimization probl...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Abstract. Ant Colony optimisation has proved suitable to solve static optimisation problems, that is...
Ant Colony optimisation has proved suitable to solve static optimisation problems, that is problems ...
Ant colony algorithms are a class of metaheuristics which are inspired from the behavior of real ant...
The ant colony algorithms are inspired by the collective behaviours observed in ant colonies and aim...
Ant colony algorithm is a heuristic algorithm which is fit for solving complicated combination opt...
AbstractResearch on a new metaheuristic for optimization is often initially focused on proof-of-conc...
In recent years Ant Colony Optimisation (ACO) algorithms have been applied to more challenging and c...
Ant colony algorithms are a class of metaheuristics which are inspired from the behaviour of real an...
Ant colony optimization is a swarm intelligence metaheuristic inspired by the foraging behavior of s...
The ant colony optimization (ACO) metaheuristic was inspired from the foraging behaviour of real ant...
Ant colony optimization (ACO) algorithms are computational problem-solving methods that are inspired...
This book is an updated effort in summarizing the trending topics and new hot research lines in solv...
An ant colony optimization framework has been compared and shown to be a viable alternative approach...
There exist a number of algorithms that can solve dynamic constraint satisfaction/optimization probl...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Abstract. Ant Colony optimisation has proved suitable to solve static optimisation problems, that is...
Ant Colony optimisation has proved suitable to solve static optimisation problems, that is problems ...
Ant colony algorithms are a class of metaheuristics which are inspired from the behavior of real ant...
The ant colony algorithms are inspired by the collective behaviours observed in ant colonies and aim...
Ant colony algorithm is a heuristic algorithm which is fit for solving complicated combination opt...
AbstractResearch on a new metaheuristic for optimization is often initially focused on proof-of-conc...
In recent years Ant Colony Optimisation (ACO) algorithms have been applied to more challenging and c...