The Benefits of Autonomous Vehicles for Community-Based Trip Sharing
Mohd. Hafiz Hasan, Pascal Van Hentenryck

TL;DR
This paper demonstrates that autonomous vehicles can significantly reduce the number of vehicles and total travel distance in community-based trip sharing, based on large-scale real-world data from Ann Arbor.
Contribution
It introduces a novel optimization method for autonomous community-based trip sharing, achieving substantial reductions in vehicle usage and travel distance.
Findings
92% reduction in daily vehicle usage with autonomous vehicles
34% improvement over previous car-pooling results
30% reduction in daily vehicle miles traveled
Abstract
This work reconsiders the concept of community-based trip sharing proposed by Hasan et al. (2018) that leverages the structure of commuting patterns and urban communities to optimize trip sharing. It aims at quantifying the benefits of autonomous vehicles for community-based trip sharing, compared to a car-pooling platform where vehicles are driven by their owners. In the considered problem, each rider specifies a desired arrival time for her inbound trip (commuting to work) and a departure time for her outbound trip (commuting back home). In addition, her commute time cannot deviate too much from the duration of a direct trip. Prior work motivated by reducing parking pressure and congestion in the city of Ann Arbor, Michigan, showed that a car-pooling platform for community-based trip sharing could reduce the number of vehicles by close to 60%. This paper studies the potential…
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Taxonomy
MethodsEmirates Airlines Office in Dubai
