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- Title
The exact projective penalty method for constrained optimization.
- Authors
Norkin, Vladimir
- Abstract
A new exact projective penalty method is proposed for the equivalent reduction of constrained optimization problems to nonsmooth unconstrained ones. In the method, the original objective function is extended to infeasible points by summing its value at the projection of an infeasible point on the feasible set with the distance to the projection. Beside Euclidean projections, also a pointed projection in the direction of some fixed internal feasible point can be used. The equivalence means that local and global minimums of the problems coincide. Nonconvex sets with multivalued Euclidean projections are admitted, and the objective function may be lower semicontinuous. The particular case of convex problems is included. The obtained unconstrained or box constrained problem is solved by a version of the branch and bound method combined with local optimization. In principle, any local optimizer can be used within the branch and bound scheme but in numerical experiments sequential quadratic programming method was successfully used. So the proposed exact penalty method does not assume the existence of the objective function outside the allowable area and does not require the selection of the penalty coefficient.
- Subjects
CONSTRAINED optimization; POINT set theory; PROBLEM solving; NONSMOOTH optimization; QUADRATIC programming
- Publication
Journal of Global Optimization, 2024, Vol 89, Issue 2, p259
- ISSN
0925-5001
- Publication type
Article
- DOI
10.1007/s10898-023-01350-4