We propose a new heuristic for nonlinear global optimization combining a variable neighborhood search framework with a modified trust-region algorithm as local search. The proposed method presents the capability to prematurely interrupt the local search if the iterates are converging to a local minimum that has already been visited or if they are reaching an area where no significant improvement can be expected. The neighborhoods, as well as the neighbors selection procedure, are exploiting the curvature of the objective function. Numerical tests are performed on a set of unconstrained nonlinear problems from the literature. Results illustrate that the new method significantly outperforms existing heuristics from the literature in terms of ...
This thesis considers the practical problem of constrained and unconstrained local optimization. Thi...
We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivat...
We propose a new trust region based optimization algorithm for solving unconstrained nonlinear probl...
We propose a new heuristic for nonlinear global optimization combining a variable neighborhood searc...
The proposed heuristic combines a variable neighborhood search (VNS) framework with a local search p...
AbstractThis paper presents variable neighborhood search (VNS) for the problem of finding the global...
This paper presents variable neighborhood search (VNS) for the problem of finding the global minimum...
In this thesis, we present new methods for solving nonlinear optimization problems. These problems a...
In this paper we deal with the use of local searches within global optimization algorithms. We discu...
Local search algorithms operate by making small changes to candidate solutions with the aim of reach...
In this thesis we present new methods for solving nonlinear optimization problems These problems a...
Geometric and information frameworks for constructing global optimization algorithms are considered,...
A large number of algorithms introduced in the literature to find the global minimum of a real func...
Many discrete optimization problems of practical interest cannot be solved to optimality in the avai...
This work is concerned with the theoretical study and the implementation of algorithms for solving t...
This thesis considers the practical problem of constrained and unconstrained local optimization. Thi...
We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivat...
We propose a new trust region based optimization algorithm for solving unconstrained nonlinear probl...
We propose a new heuristic for nonlinear global optimization combining a variable neighborhood searc...
The proposed heuristic combines a variable neighborhood search (VNS) framework with a local search p...
AbstractThis paper presents variable neighborhood search (VNS) for the problem of finding the global...
This paper presents variable neighborhood search (VNS) for the problem of finding the global minimum...
In this thesis, we present new methods for solving nonlinear optimization problems. These problems a...
In this paper we deal with the use of local searches within global optimization algorithms. We discu...
Local search algorithms operate by making small changes to candidate solutions with the aim of reach...
In this thesis we present new methods for solving nonlinear optimization problems These problems a...
Geometric and information frameworks for constructing global optimization algorithms are considered,...
A large number of algorithms introduced in the literature to find the global minimum of a real func...
Many discrete optimization problems of practical interest cannot be solved to optimality in the avai...
This work is concerned with the theoretical study and the implementation of algorithms for solving t...
This thesis considers the practical problem of constrained and unconstrained local optimization. Thi...
We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivat...
We propose a new trust region based optimization algorithm for solving unconstrained nonlinear probl...