An ant colony optimization framework has been compared and shown to be a viable alternative approach to other stochastic search algorithms. The algorithm has been tested for variety of different benchmark test functions involving constrained and unconstrained NLP, MILP, and MINLP optimization problems. This novel algorithm handles different types of continuous functions very well and can be successfully used for large-scale process optimization
Research into ant colony algorithms for solving continuous optimization problems forms one of the mo...
Many classical as well as modern optimization techniques exist. One such modern method belonging to ...
In this article, we propose UACOR, a unified ant colony optimization (ACO) algorithm for continuous ...
An ant colony optimization framework has been compared and shown to be a viable alternative approach...
In this work, we present a way to extend Ant Colony Optimization (ACO), so that it can be applied to...
This paper presents how the Ant Colony Optimization (ACO) metaheuristic can be extended to continuou...
An ant colony optimization (ACO) algorithm offers algorithmic techniques for optimization by simulat...
This study proposes an improved solution algorithm using ant colony optimization (ACO) for finding g...
Real world problems are often of dynamic nature. They form a class of difficult problems that meta-h...
Thése présentée en vue de l’obtention du titre de Docteur en Science Appliquées. ii Summary Ant ...
Ant colony algorithm is a heuristic algorithm which is fit for solving complicated combination opt...
Various continuous ant colony optimization (CACO) strategies are proposed by researchers to resolve ...
In this paper, we introduce ACOMV :an ant colony optimization (ACO) algorithm that extends the ACOℝ ...
This study introduces a new algorithm for the ant colony optimization (ACO) method, which has been p...
Other methods developed recently include the continuous interacting ant colony (CIAC) algorithm [16,...
Research into ant colony algorithms for solving continuous optimization problems forms one of the mo...
Many classical as well as modern optimization techniques exist. One such modern method belonging to ...
In this article, we propose UACOR, a unified ant colony optimization (ACO) algorithm for continuous ...
An ant colony optimization framework has been compared and shown to be a viable alternative approach...
In this work, we present a way to extend Ant Colony Optimization (ACO), so that it can be applied to...
This paper presents how the Ant Colony Optimization (ACO) metaheuristic can be extended to continuou...
An ant colony optimization (ACO) algorithm offers algorithmic techniques for optimization by simulat...
This study proposes an improved solution algorithm using ant colony optimization (ACO) for finding g...
Real world problems are often of dynamic nature. They form a class of difficult problems that meta-h...
Thése présentée en vue de l’obtention du titre de Docteur en Science Appliquées. ii Summary Ant ...
Ant colony algorithm is a heuristic algorithm which is fit for solving complicated combination opt...
Various continuous ant colony optimization (CACO) strategies are proposed by researchers to resolve ...
In this paper, we introduce ACOMV :an ant colony optimization (ACO) algorithm that extends the ACOℝ ...
This study introduces a new algorithm for the ant colony optimization (ACO) method, which has been p...
Other methods developed recently include the continuous interacting ant colony (CIAC) algorithm [16,...
Research into ant colony algorithms for solving continuous optimization problems forms one of the mo...
Many classical as well as modern optimization techniques exist. One such modern method belonging to ...
In this article, we propose UACOR, a unified ant colony optimization (ACO) algorithm for continuous ...