The Static and Stochastic VRPTW with both random Customers and Reveal Times: algorithms and recourse strategies
Michael Saint-Guillain, Christine Solnon, Yves Deville

TL;DR
This paper addresses the complex stochastic vehicle routing problem with customer demands and reveal times, proposing new recourse strategies, algorithms, and a real-world benchmark to improve operational efficiency under uncertainty.
Contribution
It introduces novel recourse strategies and algorithms for the SS-VRPTW-CR, accounting for stochastic reveal times and demands, and provides a new benchmark based on real-world data.
Findings
The proposed algorithms outperform basic policies in simulations.
Recourse strategies effectively handle capacity and useless trips.
Benchmark data from Lyon enhances practical relevance.
Abstract
Unlike its deterministic counterpart, static and stochastic vehicle routing problems (SS-VRP) aim at modeling and solving real-life operational problems by considering uncertainty on data. We consider the SS-VRPTW-CR introduced in Saint-Guillain et al. (2017). Like the SS-VRP introduced by Bertsimas (1992), we search for optimal first stage routes for a fleet of vehicles to handle a set of stochastic customer demands, i.e., demands are uncertain and we only know their probabilities. In addition to capacity constraints, customer demands are also constrained by time windows. Unlike all SS-VRP variants, the SS-VRPTW-CR does not make any assumption on the time at which a stochastic demand is revealed, i.e., the reveal time is stochastic as well. To handle this new problem, we introduce waiting locations: Each vehicle is assigned a sequence of waiting locations from which it may serve some…
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Taxonomy
TopicsVehicle Routing Optimization Methods · Supply Chain and Inventory Management · Optimization and Packing Problems
