Quantifying the benefits of vehicle pooling with shareability networks

@article{Santi2014QuantifyingTB,
  title={Quantifying the benefits of vehicle pooling with shareability networks},
  author={Paolo Santi and Giovanni Resta and Michael Szell and Stanislav Sobolevsky and Steven H. Strogatz and Carlo Ratti},
  journal={Proceedings of the National Academy of Sciences of the United States of America},
  year={2014},
  volume={111 37},
  pages={
          13290-4
        }
}
Taxi services are a vital part of urban transportation, and a considerable contributor to traffic congestion and air pollution causing substantial adverse effects on human health. Sharing taxi trips is a possible way of reducing the negative impact of taxi services on cities, but this comes at the expense of passenger discomfort quantifiable in terms of a longer travel time. Due to computational challenges, taxi sharing has traditionally been approached on small scales, such as within airport… CONTINUE READING

Citations

Publications citing this paper.
SHOWING 1-10 OF 213 CITATIONS

Improving Ridesplitting Service Using Optimization Procedures on Shareability Network: A Case Study of Chengdu, China

  • Meiting Tu, Ye LI, +4 authors XuegangJeff Ban
  • Computer Science
  • 2019 IEEE Intelligent Transportation Systems Conference (ITSC)
  • 2019
VIEW 3 EXCERPTS
CITES METHODS
HIGHLY INFLUENCED

Mobility Sharing as a Preference Matching Problem

VIEW 4 EXCERPTS
CITES METHODS & BACKGROUND
HIGHLY INFLUENCED

Optimum versus Nash-equilibrium in taxi ridesharing

VIEW 4 EXCERPTS
CITES BACKGROUND & METHODS
HIGHLY INFLUENCED

Proactive rebalancing and speed-up techniques for on-demand high capacity ridesourcing services.

VIEW 5 EXCERPTS
CITES METHODS & BACKGROUND
HIGHLY INFLUENCED

Proactive rebalancing and speed-up techniques for on-demand high capacity vehicle pooling

VIEW 5 EXCERPTS
CITES METHODS & BACKGROUND
HIGHLY INFLUENCED

Internet Science

VIEW 10 EXCERPTS
CITES BACKGROUND & METHODS
HIGHLY INFLUENCED

Ride Sharing and Dynamic Networks Analysis

VIEW 7 EXCERPTS
CITES BACKGROUND & RESULTS
HIGHLY INFLUENCED

FILTER CITATIONS BY YEAR

2014
2019

CITATION STATISTICS

  • 27 Highly Influenced Citations

  • Averaged 50 Citations per year from 2017 through 2019

  • 10% Increase in citations per year in 2019 over 2018

References

Publications referenced by this paper.
SHOWING 1-10 OF 13 REFERENCES

T-share: A large-scale dynamic taxi ridesharing service

VIEW 3 EXCERPTS
HIGHLY INFLUENTIAL

New york city 2014 taxicab factbook

  • M. Bloomberg, D. Yassky
  • 2014
VIEW 1 EXCERPT

Hunting or waiting? Discovering passenger-finding strategies from a large-scale real-world taxi dataset

  • Bin Li, Daqing Zhang, +4 authors Qiang Yang
  • Computer Science
  • 2011 IEEE International Conference on Pervasive Computing and Communications Workshops (PERCOM Workshops)
  • 2011
VIEW 2 EXCERPTS

Dynamic pickup and delivery problems

VIEW 2 EXCERPTS

The case against map-matching

  • B. Grush
  • Eur. J. Nav. 6,
  • 2008
VIEW 2 EXCERPTS

Effects of vehicle speed and engine load on motor vehicle emissions.

VIEW 1 EXCERPT

On-road motor vehicle emissions and fuel consumption in urban driving conditions.

VIEW 1 EXCERPT