On the algorithmic solution of optimization problems subject to probabilistic/robust (probust) constraints

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Date

Volume

96

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Journal

Mathematical methods of operations research : ZOR

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Publisher

Berlin ; Heidelberg : Springer

Abstract

We present an adaptive grid refinement algorithm to solve probabilistic optimization problems with infinitely many random constraints. Using a bilevel approach, we iteratively aggregate inequalities that provide most information not in a geometric but in a probabilistic sense. This conceptual idea, for which a convergence proof is provided, is then adapted to an implementable algorithm. The efficiency of our approach when compared to naive methods based on uniform grid refinement is illustrated for a numerical test example as well as for a water reservoir problem with joint probabilistic filling level constraints.

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CC BY 4.0 Unported