An iterative sample scenario approach for the dynamic dispatch waves problem
Leon Lan, Jasper van Doorn, Niels A. Wouda, Arpan Rijal, Sandjai, Bhulai

TL;DR
This paper introduces an iterative sample scenario approach called ICD for solving the dynamic dispatch waves problem in same-day delivery, effectively balancing immediate dispatching and routing consolidation under uncertainty.
Contribution
The paper proposes a novel iterative scenario-based method for dynamic dispatching that is simple, easy to implement, and performs well on complex routing problems.
Findings
ICD variants efficiently solve large state and action spaces.
Threshold-based ICD nearly matches top machine learning strategies.
Method converges quickly to high-quality solutions.
Abstract
A challenge in same-day delivery operations is that delivery requests are typically not known beforehand, but are instead revealed dynamically during the day. This uncertainty introduces a trade-off between dispatching vehicles to serve requests as soon as they are revealed to ensure timely delivery, and delaying the dispatching decision to consolidate routing decisions with future, currently unknown requests. In this paper, we study the dynamic dispatch waves problem, a same-day delivery problem in which vehicles are dispatched at fixed decision moments. At each decision moment, the system operator must decide which of the known requests to dispatch, and how to route these dispatched requests. The operator's goal is to minimize the total routing cost while ensuring that all requests are served on time. We propose iterative conditional dispatch (ICD), an iterative solution construction…
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Taxonomy
TopicsVehicle Routing Optimization Methods · Transportation and Mobility Innovations · Transportation Planning and Optimization
