Practical methods of optimization; (2nd ed.)
Practical methods of optimization; (2nd ed.)
Trust-region methods
On the Global Convergence of a Filter--SQP Algorithm
SIAM Journal on Optimization
A Trust Region Method for Solving Generalized Complementarity Problems
SIAM Journal on Optimization
Log-Sigmoid nonlinear Lagrange method for nonlinear optimization problems over second-order cones
Journal of Computational and Applied Mathematics
Hi-index | 7.29 |
This paper concerns a filter technique and its application to the trust region method for nonlinear programming (NLP) problems. We used our filter trust region algorithm to solve NLP problems with equality and inequality constraints, instead of solving NLP problems with just inequality constraints, as was introduced by Fletcher et al. [R. Fletcher, S. Leyffer, Ph.L. Toint, On the global converge of an SLP-filter algorithm, Report NA/183, Department of Mathematics, Dundee University, Dundee, Scotland, 1999]. We incorporate this filter technique into the traditional trust region method such that the new algorithm possesses nonmonotonicity. Unlike the tradition trust region method, our algorithm performs a nonmonotone filter technique to find a new iteration point if a trial step is not accepted. Under mild conditions, we prove that the algorithm is globally convergent.