Augmented Lagrangian method with nonmonotone penalty parameters for constrained optimization


Autoria(s): Birgin, Ernesto Julian Goldberg; Martinez, J. M.
Contribuinte(s)

UNIVERSIDADE DE SÃO PAULO

Data(s)

07/11/2013

2012

Resumo

At each outer iteration of standard Augmented Lagrangian methods one tries to solve a box-constrained optimization problem with some prescribed tolerance. In the continuous world, using exact arithmetic, this subproblem is always solvable. Therefore, the possibility of finishing the subproblem resolution without satisfying the theoretical stopping conditions is not contemplated in usual convergence theories. However, in practice, one might not be able to solve the subproblem up to the required precision. This may be due to different reasons. One of them is that the presence of an excessively large penalty parameter could impair the performance of the box-constraint optimization solver. In this paper a practical strategy for decreasing the penalty parameter in situations like the one mentioned above is proposed. More generally, the different decisions that may be taken when, in practice, one is not able to solve the Augmented Lagrangian subproblem will be discussed. As a result, an improved Augmented Lagrangian method is presented, which takes into account numerical difficulties in a satisfactory way, preserving suitable convergence theory. Numerical experiments are presented involving all the CUTEr collection test problems.

PRONEX-CNPq/FAPERJ [E-26/171.1510/2006-APQ1]

PRONEXCNPq/FAPERJ

FAPESP [2006/53768-0, 2006/03496-3, 2009/10241-0]

CNPq [304484/2007-5]

Identificador

COMPUTATIONAL OPTIMIZATION AND APPLICATIONS, NEW YORK, v. 51, n. 3, p. 941-965, APR, 2012

0926-6003

http://www.producao.usp.br/handle/BDPI/43175

10.1007/s10589-011-9396-0

http://dx.doi.org/10.1007/s10589-011-9396-0

Idioma(s)

eng

Publicador

SPRINGER

NEW YORK

Relação

COMPUTATIONAL OPTIMIZATION AND APPLICATIONS

Direitos

restrictedAccess

Copyright SPRINGER

Palavras-Chave #NONLINEAR PROGRAMMING #AUGMENTED LAGRANGIAN METHODS #PENALTY PARAMETERS #NUMERICAL EXPERIMENTS #SPECTRAL PROJECTED GRADIENTS #LINEAR-DEPENDENCE CONDITION #SIMPLE BOUNDS #ALGORITHM #MINIMIZATION #QUALIFICATION #CONVERGENCE #OPERATIONS RESEARCH & MANAGEMENT SCIENCE #MATHEMATICS, APPLIED
Tipo

article

original article

publishedVersion