A Robust Optimization Framework for Two-Echelon Vehicle and UAV Routing for Post-Disaster Humanitarian Logistics Operations
Providing first aid and other supplies (e.g., epi-pens, medical supplies, dry food, water) during and after a disaster is always challenging. The complexity of these operations increases when the transportation, power, and communications networks fail, leaving people stranded and unable to communica...
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Zusammenfassung: | Providing first aid and other supplies (e.g., epi-pens, medical supplies, dry
food, water) during and after a disaster is always challenging. The complexity
of these operations increases when the transportation, power, and
communications networks fail, leaving people stranded and unable to communicate
their locations and needs. The advent of emerging technologies like uncrewed
autonomous vehicles can help humanitarian logistics providers reach otherwise
stranded populations after transportation network failures. However, due to the
failures in telecommunication infrastructure, demand for emergency aid can
become uncertain. To address the challenges of delivering emergency aid to
trapped populations with failing infrastructure networks, we propose a novel
robust computational framework for a two-echelon vehicle routing problem that
uses uncrewed autonomous vehicles, or drones, for the deliveries. We formulate
the problem as a two-stage robust optimization model to handle demand
uncertainty. Then, we propose a column-and-constraint generation approach for
worst-case demand scenario generation for a given set of truck and drone
routes. Moreover, we develop a decomposition scheme inspired by the column
generation approach to heuristically generate drone routes for a set of demand
scenarios. Finally, we combine the heuristic decomposition scheme within the
column-andconstraint generation approach to determine robust routes for both
trucks and drones, the time that affected communities are served, and the
quantities of aid materials delivered. To validate our proposed computational
framework, we use a simulated dataset that aims to recreate emergency aid
requests in different areas of Puerto Rico after Hurricane Maria in 2017. |
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DOI: | 10.48550/arxiv.2207.11879 |