Robust Optimization for Multiobjective Programming Problems with Imprecise Information

Date

2013

Authors

Hassanzadeh, Farhad
Nemati, Hamid
Sun, Minghe

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Abstract

A robust optimization approach is proposed for generating nondominated robust solutions for multiobjective linear programming problems with imprecise coefficients in the objective functions and constraints. Robust optimization is used in dealing with impreciseness while an interactive procedure is used in eliciting preference information from the decision maker and in making tradeoffs among the multiple objectives. Robust augmented weighted Tchebycheff programs are formulated from the multiobjective linear programming model using the concept of budget of uncertainty. A linear counterpart of the robust augmented weighted Tchebycheff program is derived. Robust nondominated solutions are generated by solving the linearized counterpart of the robust augmented weighted Tchebycheff programs.

Description

Keywords

multiobjective programming, imprecise coefficients, robust optimization, interactive procedures

Citation

Hassanzadeh, F., Nemati, H., & Sun, M. (2013). Robust Optimization for Multiobjective Programming Problems with Imprecise Information. Procedia Computer Science, 17, 357-364. doi:https://doi.org/10.1016/j.procs.2013.05.046

Department

Management Science and Statistics