Content area

Abstract

Issue Title: Special Issue: Computational and Analytical Mathematics

In this paper, we propose a duality theory for semi-infinite linear programming problems under uncertainty in the constraint functions, the objective function, or both, within the framework of robust optimization. We present robust duality by establishing strong duality between the robust counterpart of an uncertain semi-infinite linear program and the optimistic counterpart of its uncertain Lagrangian dual. We show that robust duality holds whenever a robust moment cone is closed and convex. We then establish that the closed-convex robust moment cone condition in the case of constraint-wise uncertainty is in fact necessary and sufficient for robust duality. In other words, the robust moment cone is closed and convex if and only if robust duality holds for every linear objective function of the program. In the case of uncertain problems with affinely parameterized data uncertainty, we establish that robust duality is easily satisfied under a Slater type constraint qualification. Consequently, we derive robust forms of the Farkas lemma for systems of uncertain semi-infinite linear inequalities.[PUBLICATION ABSTRACT]

Details

Title
Robust linear semi-infinite programming duality under uncertainty
Author
Goberna, M A; Jeyakumar, V; Li, G; López, M A
Pages
185-203
Publication year
2013
Publication date
Jun 2013
Publisher
Springer Nature B.V.
ISSN
00255610
e-ISSN
14364646
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
1370218595
Copyright
Springer-Verlag Berlin Heidelberg and Mathematical Optimization Society 2013