Non-monotone trust region methods for nonlinear equality constrained optimization without a penalty function

M. Ulbrich, S. Ulbrich

Research output: Contribution to journalArticlepeer-review

61 Scopus citations

Abstract

We propose and analyze a class of penalty-function-free nonmonotone trust-region methods for nonlinear equality constrained optimization problems. The algorithmic framework yields global convergence without using a merit function and allows nonmonotonicity independently for both, the constraint violation and the value of the Lagrangian function. Similar to the Byrd-Omojokun class of algorithms, each step is composed of a quasi-normal and a tangential step. Both steps are required to satisfy a decrease condition for their respective trust-region subproblems. The proposed mechanism for accepting steps combines nonmonotone decrease conditions on the constraint violation and/or the Lagrangian function, which leads to a flexibility and acceptance behavior comparable to filter-based methods. We establish the global convergence of the method. Furthermore, transition to quadratic local convergence is proved. Numerical tests are presented that confirm the robustness and efficiency of the approach.

Original languageEnglish
Pages (from-to)103-135
Number of pages33
JournalMathematical Programming
Volume95
Issue number1
DOIs
StatePublished - Jan 2003

Keywords

  • Equality constraints
  • Global convergence
  • Large-scale optimization
  • Local convergence
  • Nonmonotone trust-region methods
  • Penalty function
  • Sequential quadratic programming

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