Nowadays, optimization problems are solved through meta-heuristic algorithms based on stochastic search approaches borrowed from mimicking natural phenomena. Notwithstanding their successful capability to handle complex problems, the No-Free Lunch Theorem by Wolpert and Macready (1997) states that there is no ideal algorithm to deal with any kind of problem. This issue arises because of the nature of these algorithms that are not properly mathematics-based, and the convergence is not ensured. In the present study, a variant of the well-known swarm-based algorithm, the Particle Swarm Optimization (PSO), is developed to solve constrained problems with a different approach to the classical penalty function technique. State-of-art improvements ...
AbstractParticle swarm optimization (PSO) is an optimization technique based on population, which ha...
This study focuses on the development of a scheme for self-adapting the Particle Swarm Optimization ...
Abstract—As more and more real-world optimization problems become increasingly complex, algorithms w...
Nowadays, optimization problems are solved through meta-heuristic algorithms based on stochastic sea...
This is a PhD thesis by publication. It includes five journal papers, three of them already publishe...
A new local search technique is proposed and used to improve the performance of particle swarm optim...
Abstract — In this paper, we propose a novel approach to solve constrained optimization problems bas...
For constrained optimization problems set in a continuous space, feasible regions might be disjointe...
A large number of problems can be cast as optimization problems in which the objective is to find a ...
Optimization problems are classified into continuous, discrete, constrained, unconstrained determini...
With the development of computer technology, more and more intelligent algorithms in the solution of...
Particle swarm optimization (PSO) is a population-based optimization technique that has been applied...
Abstract. In this paper, the behavior of different Particle Swarm Optimization (PSO) variants is ana...
This paper develops a particle swarm optimization (PSO) based framework for constrained optimization...
In this paper, we study swarm intelligence computation for constrained optimization problems and pro...
AbstractParticle swarm optimization (PSO) is an optimization technique based on population, which ha...
This study focuses on the development of a scheme for self-adapting the Particle Swarm Optimization ...
Abstract—As more and more real-world optimization problems become increasingly complex, algorithms w...
Nowadays, optimization problems are solved through meta-heuristic algorithms based on stochastic sea...
This is a PhD thesis by publication. It includes five journal papers, three of them already publishe...
A new local search technique is proposed and used to improve the performance of particle swarm optim...
Abstract — In this paper, we propose a novel approach to solve constrained optimization problems bas...
For constrained optimization problems set in a continuous space, feasible regions might be disjointe...
A large number of problems can be cast as optimization problems in which the objective is to find a ...
Optimization problems are classified into continuous, discrete, constrained, unconstrained determini...
With the development of computer technology, more and more intelligent algorithms in the solution of...
Particle swarm optimization (PSO) is a population-based optimization technique that has been applied...
Abstract. In this paper, the behavior of different Particle Swarm Optimization (PSO) variants is ana...
This paper develops a particle swarm optimization (PSO) based framework for constrained optimization...
In this paper, we study swarm intelligence computation for constrained optimization problems and pro...
AbstractParticle swarm optimization (PSO) is an optimization technique based on population, which ha...
This study focuses on the development of a scheme for self-adapting the Particle Swarm Optimization ...
Abstract—As more and more real-world optimization problems become increasingly complex, algorithms w...