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Hyper pooling private trips into high occupancy transit like attractive shared rides

Transportation

Hyper pooling private trips into high occupancy transit like attractive shared rides

R. Kucharski and O. Cats

Discover hyper-pooled rides, a groundbreaking approach that merges the comfort of private rides with public transit efficiency. Conducted by Rafał Kucharski and Oded Cats, this research reveals how travelers can achieve an average occupancy of 5.8 and drastically reduce vehicle hours in Amsterdam. Join the journey towards smarter commuting!... show more
Abstract
The size of the solution space associated with the trip-matching problem has made the search for high-order ride-pooling prohibitive. We introduce hyper-pooled rides along with a method to identify them within urban demand patterns. Travellers of hyper-pooled rides walk to common pick-up points, travel with a shared vehicle along a sequence of stops and are dropped off at stops from which they walk to their destinations. While closely resembling classical mass transit, hyper-pooled rides are purely demand-driven, with itineraries (stop locations, sequences, timings) optimised for all co-travellers. For 2000 trips in Amsterdam the algorithm generated 40 hyper-pooled rides transporting 225 travellers. They would require 52.5 vehicle hours to travel solo, whereas in the hyper-pooled multi-stop rides, it is reduced sixfold to 9 vehicle hours only. This efficiency gain is made possible by achieving an average occupancy of 5.8 (and a maximum of 14) while remaining attractive for all co-travellers.
Publisher
npj Sustainable Mobility and Transport
Published On
Sep 13, 2024
Authors
Rafał Kucharski, Oded Cats
Tags
hyper-pooled rides
ride-pooling
public transit
trip-matching
vehicle efficiency
Amsterdam
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