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A Scalable Last-Mile Delivery Service: From Simulation to Scaled Experiment

13 September 2021
Meera Ratnagiri
Clare O'Dwyer
Logan E. Beaver
Heeseung Bang
Behdad Chalaki
Andreas A. Malikopoulos
ArXiv (abs)PDFHTML
Abstract

In this paper, we investigate the problem of a last-mile delivery service that selects up to NNN available vehicles to deliver MMM packages from a centralized depot to MMM delivery locations. The objective of the last-mile delivery service is to jointly maximize customer satisfaction (minimize delivery time) and minimize operating cost (minimize total travel time) by selecting the optimal number of vehicles to perform the deliveries. We model this as an assignment (vehicles to packages) and path planning (determining the delivery order and route) problem, which is equivalent to the NP-hard multiple traveling salesperson problem. We propose a scalable heuristic algorithm, which sacrifices some optimality to achieve a reasonable computational cost for a high number of packages. The algorithm combines hierarchical clustering with a greedy search. To validate our approach, we compare the results of our simulation to experiments in a 111:252525 scale robotic testbed for future mobility systems.

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