This paper is concerned with a trust region approximation management framework (AMF) for solving the nonlinear programming problem in general and multidisciplinary optimization problems in particular The intent of the AMF methodology is to facilitate the solution of optimization problems with high-fidelity models. While such models are designed to approximate the physical phenomena they describe to a high degree of accuracy, their use in a repetitive procedure, for example, iterations of an optimization or a search algorithm, make such use prohibitively expensive. An improvement in design with lower-fidelity, cheaper models, however, does not guarantee a corresponding improvement for the higher-fidelity problem. The AMF methodology proposed...
International audienceSurrogate models are frequently used in the optimization engineering community...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/15...
<p>Modern nonlinear programming solvers can efficiently handle very large scale optimization problem...
Abstract. This paper presents an analytically robust, globally convergent approach to managing the u...
AbstractA common engineering practice is the use of approximation models in place of expensive compu...
It is standard engineering practice to use approximation models in place of expensive simulations to...
This research investigates two competing strategies for managing the interaction between the optimiz...
To date the primary focus of most constrained approximate optimization strategies is that applicatio...
A common engineering practice is the use of approximation models in place of expensive computer simu...
We review the main techniques used in trust region algorithms for nonlinear constrained optimization...
This work discusses an approach, the Approximation Management Framework (AMF), for solving optimizat...
A general trust region strategy is proposed for solving nonlinear systems of equations and equality ...
This work is concerned with the theoretical study and the implementation of algorithms for solving t...
A trust-region SQP method for general nonlinear constrained optimization without derivatives is prop...
An algorithm for solving the problem of minimizing a non-linear function subject to equality constra...
International audienceSurrogate models are frequently used in the optimization engineering community...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/15...
<p>Modern nonlinear programming solvers can efficiently handle very large scale optimization problem...
Abstract. This paper presents an analytically robust, globally convergent approach to managing the u...
AbstractA common engineering practice is the use of approximation models in place of expensive compu...
It is standard engineering practice to use approximation models in place of expensive simulations to...
This research investigates two competing strategies for managing the interaction between the optimiz...
To date the primary focus of most constrained approximate optimization strategies is that applicatio...
A common engineering practice is the use of approximation models in place of expensive computer simu...
We review the main techniques used in trust region algorithms for nonlinear constrained optimization...
This work discusses an approach, the Approximation Management Framework (AMF), for solving optimizat...
A general trust region strategy is proposed for solving nonlinear systems of equations and equality ...
This work is concerned with the theoretical study and the implementation of algorithms for solving t...
A trust-region SQP method for general nonlinear constrained optimization without derivatives is prop...
An algorithm for solving the problem of minimizing a non-linear function subject to equality constra...
International audienceSurrogate models are frequently used in the optimization engineering community...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/15...
<p>Modern nonlinear programming solvers can efficiently handle very large scale optimization problem...