This thesis proposes a new active-set method for large-scale nonlinearly con strained optimization. The method solves a sequence of linear programs to generate search directions. The typical approach for globalization is based on damping the search directions with a trust-region constraint; our proposed ap proach is instead based on using a 2-norm regularization term in the objective. Numerical evidence is presented which demonstrates scaling inefficiencies in current sequential linear programming algorithms that use a trust-region constraint. Specifically, we show that the trust-region constraints in the trustregion subproblems significantly reduce the warm-start efficiency of these subproblem solves, and also unnecessarily induce infeasib...
Abstract. We describe an algorithm for smooth nonlinear constrained optimization problems in which a...
summary:A new algorithm for solving large scale bound constrained minimization problems is proposed....
In this paper, we propose a trust-region algorithm to minimize a nonlinear function f: R^n -> R subj...
This thesis proposes a new active-set method for large-scale nonlinearly con strained optimization. ...
This paper describes an active-set algorithm for large-scale nonlinear programming based on the succ...
We propose a numerical algorithm for solving smooth nonlinear programming problems with a large numb...
Projet PROMATHWe present an extension for nonlinear optimization under linear constraints, of an alg...
Many current algorithms for nonlinear constrained optimization problems determine a search direction...
We review the main techniques used in trust region algorithms for nonlinear constrained optimization...
We provide an effective and efficient implementation of a sequential quadratic programming (SQP) alg...
International audienceAdaptive regularized framework using cubics has emerged as an alternative to l...
The solution of trust-region and regularisation subproblems which arise in unconstrained optimizatio...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/15...
AbstractThe paper explores a trust-region active-set algorithm for general nonlinear optimization wi...
This thesis extends the design and the global convergence analysis of a class of trust-region sequen...
Abstract. We describe an algorithm for smooth nonlinear constrained optimization problems in which a...
summary:A new algorithm for solving large scale bound constrained minimization problems is proposed....
In this paper, we propose a trust-region algorithm to minimize a nonlinear function f: R^n -> R subj...
This thesis proposes a new active-set method for large-scale nonlinearly con strained optimization. ...
This paper describes an active-set algorithm for large-scale nonlinear programming based on the succ...
We propose a numerical algorithm for solving smooth nonlinear programming problems with a large numb...
Projet PROMATHWe present an extension for nonlinear optimization under linear constraints, of an alg...
Many current algorithms for nonlinear constrained optimization problems determine a search direction...
We review the main techniques used in trust region algorithms for nonlinear constrained optimization...
We provide an effective and efficient implementation of a sequential quadratic programming (SQP) alg...
International audienceAdaptive regularized framework using cubics has emerged as an alternative to l...
The solution of trust-region and regularisation subproblems which arise in unconstrained optimizatio...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/15...
AbstractThe paper explores a trust-region active-set algorithm for general nonlinear optimization wi...
This thesis extends the design and the global convergence analysis of a class of trust-region sequen...
Abstract. We describe an algorithm for smooth nonlinear constrained optimization problems in which a...
summary:A new algorithm for solving large scale bound constrained minimization problems is proposed....
In this paper, we propose a trust-region algorithm to minimize a nonlinear function f: R^n -> R subj...