This work deals with the PSO technique (Particle Swarm Optimization), which is capable to solve complex problems. This technique can be used for solving complex combinatorial problems (the traveling salesman problem, the tasks of knapsack), design of integrated circuits and antennas, in fields such as biomedicine, robotics, artificial intelligence or finance. Although the PSO algorithm is very efficient, the time required to seek out appropriate solutions for real problems often makes the task intractable. The goal of this work is to accelerate the execution time of this algorithm by the usage of Graphics processors (GPU), which offers higher computing potential while preserving the favorable price and size. The boolean satisfiability probl...
PSO is a population based evolutionary algorithm and is motivated from the simulation of social beha...
Population based metaheuristic can benefit from explicit parallelization in order to address complex...
This brief proposes a parallel implementation, with fixed point, of the particle swarm optimization ...
This thesis deals with a population based stochastic optimization technique PSO (Particle Swarm Opti...
In this paper, a model for Graphics Processing Unit (GPU) implementation of Particle Swarm Optimizat...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
This paper describes our latest implementation of Particle Swarm Optimization (PSO) with simple ring...
Particle Swarm Optimization is robust and effective method to solve optimization problems. Particle ...
AbstractConstraint Satisfaction Problems (CSPs) occur now in different domains. Several methods are ...
Particle Swarm Optimization (PSO) is a stochastic technique for solving the optimization problem. At...
Thesis deals with discrete optimization problems. It focusses on faster ways to find good solutions ...
In this paper, a model for Graphics Processing Unit (GPU) implementation of Particle Swarm Optimizat...
This brief proposes a parallel implementation, with fixed point, of the particle swarm optimization ...
PSO is a population based evolutionary algorithm and is motivated from the simulation of social beha...
Population based metaheuristic can benefit from explicit parallelization in order to address complex...
This brief proposes a parallel implementation, with fixed point, of the particle swarm optimization ...
This thesis deals with a population based stochastic optimization technique PSO (Particle Swarm Opti...
In this paper, a model for Graphics Processing Unit (GPU) implementation of Particle Swarm Optimizat...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
This paper describes our latest implementation of Particle Swarm Optimization (PSO) with simple ring...
Particle Swarm Optimization is robust and effective method to solve optimization problems. Particle ...
AbstractConstraint Satisfaction Problems (CSPs) occur now in different domains. Several methods are ...
Particle Swarm Optimization (PSO) is a stochastic technique for solving the optimization problem. At...
Thesis deals with discrete optimization problems. It focusses on faster ways to find good solutions ...
In this paper, a model for Graphics Processing Unit (GPU) implementation of Particle Swarm Optimizat...
This brief proposes a parallel implementation, with fixed point, of the particle swarm optimization ...
PSO is a population based evolutionary algorithm and is motivated from the simulation of social beha...
Population based metaheuristic can benefit from explicit parallelization in order to address complex...
This brief proposes a parallel implementation, with fixed point, of the particle swarm optimization ...