This paper presents a coercive smoothed penalty framework for nonsmooth and nonconvex constrained global optimization problems. The properties of the smoothed penalty function are derived. Convergence to an ε -global minimizer is proved. At each iteration k, the framework requires the ε(k) -global minimizer of a subproblem, where ε(k)→ε . We show that the subproblem may be solved by well-known stochastic metaheuristics, as well as by the artificial fish swarm (AFS) algorithm. In the limit, the AFS algorithm convergence to an ε(k) -global minimum of the real-valued smoothed penalty function is guaranteed with probability one, using the limiting behavior of Markov chains. In this context, we show that the transition probability of the Mar...
Publicado em: "Computational science and its applications – ICCSA 2016: 16th International Conferenc...
AbstractThis paper considers the nonlinearly constrained continuous global minimization problem. Bas...
The aim of this paper is to show that the new continuously differentiable exact penalty functions re...
This paper proposes a self-adaptive penalty function and presents a penalty-based algorithm for solv...
AbstractThis paper presents an augmented Lagrangian methodology with a stochastic population based a...
A fish swarm intelligence algorithm based on the filter set concept to accept, at each iteration, a ...
This paper aims to present a hyperbolic augmented Lagrangian (HAL) framework with guaranteed converg...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-K...
Nonlinear programming problems are known to be difficult to solve, especially those that involve a m...
This chapter aims to address the challenging and demanding issue of solving a continuous nonlinear c...
This study presents a new two-swarm cooperative fish intelligence algorithm for solving the bound con...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
Ana Maria A.C. Rocha, M. Fernanda P. Costa and Edite M.G.P. Fernandes, An Artificial Fish Swarm Filt...
The algorithm herein presented is a modified version of the artificial fish swarm algorithm for glob...
In this work, we propose a meta algorithm that can solve a multivariate global optimization problem ...
Publicado em: "Computational science and its applications – ICCSA 2016: 16th International Conferenc...
AbstractThis paper considers the nonlinearly constrained continuous global minimization problem. Bas...
The aim of this paper is to show that the new continuously differentiable exact penalty functions re...
This paper proposes a self-adaptive penalty function and presents a penalty-based algorithm for solv...
AbstractThis paper presents an augmented Lagrangian methodology with a stochastic population based a...
A fish swarm intelligence algorithm based on the filter set concept to accept, at each iteration, a ...
This paper aims to present a hyperbolic augmented Lagrangian (HAL) framework with guaranteed converg...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-K...
Nonlinear programming problems are known to be difficult to solve, especially those that involve a m...
This chapter aims to address the challenging and demanding issue of solving a continuous nonlinear c...
This study presents a new two-swarm cooperative fish intelligence algorithm for solving the bound con...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
Ana Maria A.C. Rocha, M. Fernanda P. Costa and Edite M.G.P. Fernandes, An Artificial Fish Swarm Filt...
The algorithm herein presented is a modified version of the artificial fish swarm algorithm for glob...
In this work, we propose a meta algorithm that can solve a multivariate global optimization problem ...
Publicado em: "Computational science and its applications – ICCSA 2016: 16th International Conferenc...
AbstractThis paper considers the nonlinearly constrained continuous global minimization problem. Bas...
The aim of this paper is to show that the new continuously differentiable exact penalty functions re...