Bertsimas, D, Cory-Wright, R, Pauphilet, J and Petridis, P (2024) A Stochastic Benders Decomposition Scheme for Large-Scale Stochastic Network Design. INFORMS Journal on Computing. ISSN 1091-9856 (In Press)
Abstract
Network design problems involve constructing edges in a transportation or supply chain network to minimize construction and daily operational costs. We study a stochastic version where operational costs are uncertain due to fluctuating demand and estimated as a sample average from historical data. This problem is computationally challenging, and instances with as few as 100 nodes often cannot be solved to optimality using current decomposition techniques. We propose a stochastic variant of Benders decomposition that mitigates the high computational cost of generating each cut by sampling a subset of the data at each iteration and nonetheless generates deterministically valid cuts, rather than the probabilistically valid cuts frequently proposed in the stochastic optimization literature, via a dual averaging technique. We implement both single-cut and multi-cut variants of this Benders decomposition, as well as a variant that uses clustering of the historical scenarios. To our knowledge, this is the first single-tree implementation of Benders decomposition that facilitates sampling. On instances with 100–200 nodes and relatively complete recourse, our algorithm achieves 5-7% optimality gaps, compared with 16-27% for deterministic Benders schemes, and scales to instances with 700 nodes and 50 commodities within hours. Beyond network design, our strategy could be adapted to generic two-stage stochastic mixed-integer optimization problems where second-stage costs are estimated via a sample average.
More Details
Item Type: | Article |
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Subject Areas: | Management Science and Operations |
Date Deposited: | 02 Dec 2024 11:58 |
Date of first compliant deposit: | 18 Oct 2024 |
Last Modified: | 03 Dec 2024 15:38 |
URI: | https://lbsresearch.london.edu/id/eprint/3944 |