A globally convergent augmented Lagrangian pattern search algorithm for optimization with general constraints and simple bounds

  • Authors:
  • Robert M Lewis;Virginia Torczon

  • Affiliations:
  • -;-

  • Venue:
  • A globally convergent augmented Lagrangian pattern search algorithm for optimization with general constraints and simple bounds
  • Year:
  • 1998

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Abstract

We give a pattern search adaptation of an augmented Lagrangian method due to Conn, Gould, and Toint. The algorithm proceeds by successive bound constrained minimization of an augmented Lagrangian. In the pattern search adaptation we solve this subproblem approximately using a bound constrained pattern search method. The stopping criterion proposed by Conn, Gould, and Toint for the solution of this subproblem requires explicit knowledge of derivatives. Such information is presumed absent in pattern search methods; however, we show how we can replace this with a stopping criterion based on the pattern size in a way that preserves the convergence properties of the original algorithm. In this way we proceed by successive, inexact, bound constrained minimization without knowing exactly how inexact the minimization is. So far as we know, this is the first provably convergent direct search method for general nonlinear programming.