A Multidimensional Filter SQP Algorithm for Nonlinear Programming

Authors

  • Wenjuan Xue School of Mathematics and Physics, Shanghai University of Electric Power, China
  • Weiai Liu Department of Mathematics and Physics, Shanghai Dianji University, China

DOI:

https://doi.org/10.4208/jcm.1903-m2018-0072

Keywords:

Trust region, Multidimensional filter, Constant positive generators, Global convergence, Nonlinear programming.

Abstract

We propose a multidimensional filter SQP algorithm. The multidimensional filter technique proposed by Gould et al. [SIAM J. Optim., 2005] is extended to solve constrained optimization problems. In our proposed algorithm, the constraints are partitioned into several parts, and the entry of our filter consists of these different parts. Not only the criteria for accepting a trial step would be relaxed, but the individual behavior of each part of constraints is considered. One feature is that the undesirable link between the objective function and the constraint violation in the filter acceptance criteria disappears. The other is that feasibility restoration phases are unnecessary because a consistent quadratic programming subproblem is used. We prove that our algorithm is globally convergent to KKT points under the constant positive generators (CPG) condition which is weaker than the well-known Mangasarian-Fromovitz constraint qualification (MFCQ) and the constant positive linear dependence (CPLD). Numerical results are presented to show the efficiency of the algorithm.

Published

2020-11-09

Issue

Section

Articles