Extending Scope of Robust Optimization: Comprehensive Robust Counterparts of Uncertain Problems |
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Authors: | Aharon Ben-Tal Stephen Boyd Arkadi Nemirovski |
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Affiliation: | (1) Faculty of Industrial Engineering and Management, Technion – Israel Institute of Technology, Technion city, Haifa, 32000, Israel;(2) Department of Electrical Engineering, Stanford University, Packard 264, Stanford, CA 94305, USA |
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Abstract: | ![]() In this paper, we propose a new methodology for handling optimization problems with uncertain data. With the usual Robust Optimization paradigm, one looks for the decisions ensuring a required performance for all realizations of the data from a given bounded uncertainty set, whereas with the proposed approach, we require also a controlled deterioration in performance when the data is outside the uncertainty set. The extension of Robust Optimization methodology developed in this paper opens up new possibilities to solve efficiently multi-stage finite-horizon uncertain optimization problems, in particular, to analyze and to synthesize linear controllers for discrete time dynamical systems. Research was supported by the Binational Science Foundation grant #2002038 |
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Keywords: | 90C05 90C25 90C34 93C05 |
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