This paper introduces the Mesh Adaptive Direct Search (MADS) class of algorithms for nonlinear optimization. MADS extends the Generalized Pattern Search (GPS) class by allowing local exploration, called polling, in a dense set of directions in the space of optimization variables. This means that under certain hypotheses, including a weak constraint qualification due to Rockafellar, MADS can treat constraints by the extreme barrier approach of setting the objective to infinity for infeasible points and treating the problem as unconstrained. The main GPS convergence result is to identify limit points where the Clarke generalized derivatives are nonnegative in a finite set of directions, called refining directions. Although in the unconstraine...
This paper formulates and analyzes a pattern search method for general constrained optimization base...
A new class of algorithms for solving nonlinearly constrained mixed variable optimization problems i...
We give a pattern search adaptation of an augmented Lagrangian method due to Conn, Gould, and Toint....
Abstract. This paper addresses the problem of minimization of a nonsmooth function under general non...
This paper is intended not as a survey, but as an introduction to some ideas behind the class of mes...
This paper deals with generalized pattern search (GPS) algorithms for linearly constrained optimizat...
International audienceThe context of this research is multiobjective optimization where conflicting ...
This paper describes a Parallel Space Decomposition (PSD) technique for the Mesh Adaptive Direct Sea...
Abstract The subject of this paper is inequality constrained black-box optimization with mesh adapti...
The purpose of this paper is to introduce a new way of choosing directions for the Mesh Adaptive Dir...
In this paper, computational and simulation results are presented for the performance of the fitness...
Abstract. This paper contains a new convergence analysis for the Lewis and Torczon GPS class of patt...
The purpose of this paper is twofold: first, to introduce deterministic strategies for directional d...
We extend pattern search methods to linearly constrained minimization. We develop a general class of...
This paper contains a new convergence analysis for the Lewis and Torczon generalized pattern search ...
This paper formulates and analyzes a pattern search method for general constrained optimization base...
A new class of algorithms for solving nonlinearly constrained mixed variable optimization problems i...
We give a pattern search adaptation of an augmented Lagrangian method due to Conn, Gould, and Toint....
Abstract. This paper addresses the problem of minimization of a nonsmooth function under general non...
This paper is intended not as a survey, but as an introduction to some ideas behind the class of mes...
This paper deals with generalized pattern search (GPS) algorithms for linearly constrained optimizat...
International audienceThe context of this research is multiobjective optimization where conflicting ...
This paper describes a Parallel Space Decomposition (PSD) technique for the Mesh Adaptive Direct Sea...
Abstract The subject of this paper is inequality constrained black-box optimization with mesh adapti...
The purpose of this paper is to introduce a new way of choosing directions for the Mesh Adaptive Dir...
In this paper, computational and simulation results are presented for the performance of the fitness...
Abstract. This paper contains a new convergence analysis for the Lewis and Torczon GPS class of patt...
The purpose of this paper is twofold: first, to introduce deterministic strategies for directional d...
We extend pattern search methods to linearly constrained minimization. We develop a general class of...
This paper contains a new convergence analysis for the Lewis and Torczon generalized pattern search ...
This paper formulates and analyzes a pattern search method for general constrained optimization base...
A new class of algorithms for solving nonlinearly constrained mixed variable optimization problems i...
We give a pattern search adaptation of an augmented Lagrangian method due to Conn, Gould, and Toint....