Nonlinear programming problems are known to be difficult to solve, especially those that involve a multimodal objective function and/or non-convex and at the same time disjointed solution space. Heuristic methods that do not require derivative calculations have been used to solve this type of constrained problems. The most used constraint-handling technique has been the penalty method. This method converts the constrained optimization problem to a sequence of unconstrained problems by adding, to the objective function, terms that penalize constraint violation. The selection of the appropriate penalty parameter value is the main difficulty with this type of method. To address this issue, we use a global competitive ranking method. This metho...
The herein presented mutation-based artificial fish swarm (AFS) algorithm includes mutation operator...
Distribution based artificial fish swarm (DbAFS) is a new heuristic for continuous global optimizati...
This paper presents a filter-based artificial fish swarm algorithm for solving non- convex constrained ...
A fish swarm intelligence algorithm based on the filter set concept to accept, at each iteration, a ...
Ana Maria A.C. Rocha, M. Fernanda P. Costa and Edite M.G.P. Fernandes, An Artificial Fish Swarm Filt...
Constrained nonlinear programming problems involving a nonlinear objective function with inequality ...
The algorithm herein presented is a modified version of the artificial fish swarm algorithm for glob...
Abstract. An artificial fish swarm algorithm based on a filter methodo-logy for trial solutions acce...
This chapter aims to address the challenging and demanding issue of solving a continuous nonlinear c...
AbstractThis paper presents an augmented Lagrangian methodology with a stochastic population based a...
This paper presents an augmented Lagrangian methodology with a stochastic population based algorithm...
This study presents a new two-swarm cooperative fish intelligence algorithm for solving the bound con...
AbstractParticle swarm optimization (PSO) is an optimization technique based on population, which ha...
Abstract. The herein presented mutation-based artificial fish swarm (AFS) algorithm includes mutatio...
Nonlinear optimization problems introduce the possibility of multiple local optima. The task of glo...
The herein presented mutation-based artificial fish swarm (AFS) algorithm includes mutation operator...
Distribution based artificial fish swarm (DbAFS) is a new heuristic for continuous global optimizati...
This paper presents a filter-based artificial fish swarm algorithm for solving non- convex constrained ...
A fish swarm intelligence algorithm based on the filter set concept to accept, at each iteration, a ...
Ana Maria A.C. Rocha, M. Fernanda P. Costa and Edite M.G.P. Fernandes, An Artificial Fish Swarm Filt...
Constrained nonlinear programming problems involving a nonlinear objective function with inequality ...
The algorithm herein presented is a modified version of the artificial fish swarm algorithm for glob...
Abstract. An artificial fish swarm algorithm based on a filter methodo-logy for trial solutions acce...
This chapter aims to address the challenging and demanding issue of solving a continuous nonlinear c...
AbstractThis paper presents an augmented Lagrangian methodology with a stochastic population based a...
This paper presents an augmented Lagrangian methodology with a stochastic population based algorithm...
This study presents a new two-swarm cooperative fish intelligence algorithm for solving the bound con...
AbstractParticle swarm optimization (PSO) is an optimization technique based on population, which ha...
Abstract. The herein presented mutation-based artificial fish swarm (AFS) algorithm includes mutatio...
Nonlinear optimization problems introduce the possibility of multiple local optima. The task of glo...
The herein presented mutation-based artificial fish swarm (AFS) algorithm includes mutation operator...
Distribution based artificial fish swarm (DbAFS) is a new heuristic for continuous global optimizati...
This paper presents a filter-based artificial fish swarm algorithm for solving non- convex constrained ...