Ambiguous Joint Chance Constraints Under Mean and Dispersion Information

Ambiguous Joint Chance Constraints Under Mean and Dispersion Information

0.00 Avg rating0 Votes
Article ID: iaor20171641
Volume: 65
Issue: 3
Start Page Number: 751
End Page Number: 767
Publication Date: Jun 2017
Journal: Operations Research
Authors: , , ,
Keywords: chance-constrained optimisation, constraint programming, global optimization
Abstract:

We study joint chance constraints where the distribution of the uncertain parameters is only known to belong to an ambiguity set characterized by the mean and support of the uncertainties and by an upper bound on their dispersion. This setting gives rise to pessimistic (optimistic) ambiguous chance constraints, which require the corresponding classical chance constraints to be satisfied for every (for at least one) distribution in the ambiguity set. We demonstrate that the pessimistic joint chance constraints are conic representable if (i) the constraint coefficients of the decisions are deterministic, (ii) the support set of the uncertain parameters is a cone, and (iii) the dispersion function is of first order, that is, it is positively homogeneous. We also show that pessimistic joint chance constrained programs become intractable as soon as any of the conditions (i), (ii) or (iii) is relaxed in the mildest possible way. We further prove that the optimistic joint chance constraints are conic representable if (i) holds, and that they become intractable if (i) is violated. We show in numerical experiments that our results allow us to solve large‐scale project management and image reconstruction models to global optimality. The online appendix is available at https://doi.org/10.1287/opre.2016.1583.

Reviews

Required fields are marked *. Your email address will not be published.