Abstract Extending the notion of global search to multiobjective optimization is far than straightforward, mainly for the reason that one almost always has to deal with infinite Pareto optima and correspondingly infinite optimal values. Adopting Stephen Smale’s global analysis framework, we highlight the geometrical features of the set of Pareto optima and we are led to consistent notions of global convergence. We formulate then a multiobjective version of a celebrated result by Stephens and Baritompa, about the necessity of generating everywhere dense sample sequences, and describe a globally convergent algorithm in case the Lipschitz constant of the determinant of the Jacobian is known
The interface between computer science and operations research has drawn much attention recently esp...
The objective of global optimization is to find the globally best solution of a model. Nonlinear mod...
. Inspired by a method by Jones et al. [11], we present a global optimization algorithm based on mul...
Extending the notion of global search to multiobjective optimization is far than straightforward, ma...
We recall some of the multi-criteria and multidisciplinary optimization formulations with emphasis o...
This monograph deals with a general class of solution approaches in deterministic global optimizatio...
The paper presents an effective, gradient-based procedure for locating the optimum for either constr...
Global optimization problems are considered where the objective function is a continuous, non-differ...
This thesis looks at some theoretical and practical aspects of global optimization - as we shall see...
The global optimisation problem has received much attention in the past twenty-five years. The probl...
AbstractA family of deterministic algorithms is introduced, designed to solve the global optimisatio...
This book begins with a concentrated introduction into deterministic global optimization and moves f...
In this paper, the global optimization problem miny∈SF(y) with S being a hyperinterval in RN and F(y...
Optimization problems abound in most fields of science, engineering, and technology. In many of thes...
In this thesis, we present new methods for solving nonlinear optimization problems. These problems a...
The interface between computer science and operations research has drawn much attention recently esp...
The objective of global optimization is to find the globally best solution of a model. Nonlinear mod...
. Inspired by a method by Jones et al. [11], we present a global optimization algorithm based on mul...
Extending the notion of global search to multiobjective optimization is far than straightforward, ma...
We recall some of the multi-criteria and multidisciplinary optimization formulations with emphasis o...
This monograph deals with a general class of solution approaches in deterministic global optimizatio...
The paper presents an effective, gradient-based procedure for locating the optimum for either constr...
Global optimization problems are considered where the objective function is a continuous, non-differ...
This thesis looks at some theoretical and practical aspects of global optimization - as we shall see...
The global optimisation problem has received much attention in the past twenty-five years. The probl...
AbstractA family of deterministic algorithms is introduced, designed to solve the global optimisatio...
This book begins with a concentrated introduction into deterministic global optimization and moves f...
In this paper, the global optimization problem miny∈SF(y) with S being a hyperinterval in RN and F(y...
Optimization problems abound in most fields of science, engineering, and technology. In many of thes...
In this thesis, we present new methods for solving nonlinear optimization problems. These problems a...
The interface between computer science and operations research has drawn much attention recently esp...
The objective of global optimization is to find the globally best solution of a model. Nonlinear mod...
. Inspired by a method by Jones et al. [11], we present a global optimization algorithm based on mul...