Abstract
We propose a generic model for the capacitated vehicle routing problem (CVRP) under demand uncertainty. By combining risk measures, satisficing measures, or disutility functions with complete or partial characterizations of the probability distribution governing the demands, our formulation bridges the popular but often independently studied paradigms of stochastic programming and distributionally robust optimization. We characterize when an uncertainty-affected CVRP is (not) amenable to a solution via a popular branch-and-cut scheme, and we elucidate how this solvability relates to the interplay between the employed decision criterion and the available description of the uncertainty. Our framework offers a unified treatment of several CVRP variants from the recent literature, such as formulations that optimize the requirements violation or the essential riskiness indices, and it, at the same time, allows us to study new problem variants, such as formulations that optimize the worst case expected disutility over Wasserstein or φ-divergence ambiguity sets. All of our formulations can be solved by the same branch-and-cut algorithm with only minimal adaptations, which makes them attractive for practical implementations. © 2023 INFORMS.
| Original language | English |
|---|---|
| Pages (from-to) | 425-443 |
| Journal | Operations Research |
| Volume | 72 |
| Issue number | 2 |
| Online published | 22 Nov 2023 |
| DOIs | |
| Publication status | Published - Mar 2024 |
Funding
C. P. Ho sincerely acknowledges funding from the National Natural Science Foundation of China [Grant 72032005], the City University of Hong Kong (CityU) Start-Up Grant [Grant 9610481], and the CityU Strategic Research Grant [Grants 7005688 and 7005891]. W. Wiesemann gratefully acknowledges funding from the Engineering and Physical Sciences Research Council [Grant EP/W003317/1].
Research Keywords
- capacitated vehicle routing problem
- stochastic programming
- distributionally robust optimization
- branch-and-cut