Nonlinearly constrained optimization via sequential regularized linear programming

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 p...

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Main Author: Crowe, Mitch
Language:English
Published: University of British Columbia 2010
Online Access:http://hdl.handle.net/2429/29648
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-BVAU.2429-296482014-03-26T03:37:28Z Nonlinearly constrained optimization via sequential regularized linear programming Crowe, Mitch 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 infeasible subproblems. We also show that the use of a regularized linear programming (RLP) step largely elim inates these inefficiencies and, additionally, that the dual problem to RLP is a bound-constrained least-squares problem, which may allow for very efficient subproblem solves using gradient-projection-type algorithms. Two new algorithms were implemented and are presented in this thesis, based on solving sequences of RLPs and trust-region constrained LPs. These algorithms are used to demonstrate the effectiveness of each type of subproblem, which we extrapolate onto the effectiveness of an RLP-based algorithm with the addition of Newton-like steps. All of the source code needed to reproduce the figures and tables presented in this thesis is available online at http: //www.cs.ubc.ca/labs/scl/thesis/lOcrowe/ 2010-10-29T14:21:35Z 2010-10-29T14:21:35Z 2010 2010-10-29T14:21:35Z 2010-11 Electronic Thesis or Dissertation http://hdl.handle.net/2429/29648 eng University of British Columbia
collection NDLTD
language English
sources NDLTD
description 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 infeasible subproblems. We also show that the use of a regularized linear programming (RLP) step largely elim inates these inefficiencies and, additionally, that the dual problem to RLP is a bound-constrained least-squares problem, which may allow for very efficient subproblem solves using gradient-projection-type algorithms. Two new algorithms were implemented and are presented in this thesis, based on solving sequences of RLPs and trust-region constrained LPs. These algorithms are used to demonstrate the effectiveness of each type of subproblem, which we extrapolate onto the effectiveness of an RLP-based algorithm with the addition of Newton-like steps. All of the source code needed to reproduce the figures and tables presented in this thesis is available online at http: //www.cs.ubc.ca/labs/scl/thesis/lOcrowe/
author Crowe, Mitch
spellingShingle Crowe, Mitch
Nonlinearly constrained optimization via sequential regularized linear programming
author_facet Crowe, Mitch
author_sort Crowe, Mitch
title Nonlinearly constrained optimization via sequential regularized linear programming
title_short Nonlinearly constrained optimization via sequential regularized linear programming
title_full Nonlinearly constrained optimization via sequential regularized linear programming
title_fullStr Nonlinearly constrained optimization via sequential regularized linear programming
title_full_unstemmed Nonlinearly constrained optimization via sequential regularized linear programming
title_sort nonlinearly constrained optimization via sequential regularized linear programming
publisher University of British Columbia
publishDate 2010
url http://hdl.handle.net/2429/29648
work_keys_str_mv AT crowemitch nonlinearlyconstrainedoptimizationviasequentialregularizedlinearprogramming
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