Scheduling of Automated Vehicles for Ridesharing Services
Shuo Han, Fei Miao, Ufuk Topcu, George Pappas

Citation
Shuo Han, Fei Miao, Ufuk Topcu, George Pappas. "Scheduling of Automated Vehicles for Ridesharing Services". Talk or presentation, October, 2016; Poster presented at the 2016 TerraSwarm Annual Meeting.

Abstract
Ridesharing services often require constant rebalancing of vehicle supplies in order to meet passenger demand across the transportation network. Current ridesharing services are mostly provided by human drivers, where rebalancing is controlled by setting price differences between service regions so that drivers are incentivized to relocate to regions with higher prices. In recent years, there has been a growing interest in introducing autonomous cars into ridesharing. Since autonomous cars can receive commands from a central authority and be directly dispatched, they provide more flexibility in terms of control and can potentially improve the efficiency of rebalancing. In our poster, we present our work on two topics in automated ridesharing. First, we proposed a metric that quantifies the efficiency gain of automated ridesharing by comparing the total amount of vehicle flow required for rebalancing. The proposed metric is independent of the actual demand and only relies on properties of the transportation network. We have also developed a set of numerical tools for computing the metric, which are applied to a case study of the Washington, DC metropolitan area. Second, we studied how to make use of predictions of future passenger demand from historical data in order to improve the service quality (measured by wait time of passengers) of automated ridesharing. We developed a data-driven distributionally robust optimization framework to address the uncertainties in demand prediction. We also showed that the robust optimization problem can be converted to an equivalent form for which numerically efficient solutions are available. We evaluate the performance of the data-driven vehicle balancing framework based on four years of taxi trip data from New York City.

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Citation formats  
  • HTML
    Shuo Han, Fei Miao, Ufuk Topcu, George Pappas. <a
    href="http://www.terraswarm.org/pubs/860.html"><i>Scheduling
    of Automated Vehicles for Ridesharing
    Services</i></a>, Talk or presentation, 
    October, 2016; Poster presented at the <a
    href="http://terraswarm.org/conferences/16/annual"
    >2016 TerraSwarm Annual Meeting</a>.
  • Plain text
    Shuo Han, Fei Miao, Ufuk Topcu, George Pappas.
    "Scheduling of Automated Vehicles for Ridesharing
    Services". Talk or presentation,  October, 2016; Poster
    presented at the <a
    href="http://terraswarm.org/conferences/16/annual"
    >2016 TerraSwarm Annual Meeting</a>.
  • BibTeX
    @presentation{HanMiaoTopcuPappas16_SchedulingOfAutomatedVehiclesForRidesharingServices,
        author = {Shuo Han and Fei Miao and Ufuk Topcu and George
                  Pappas},
        title = {Scheduling of Automated Vehicles for Ridesharing
                  Services},
        month = {October},
        year = {2016},
        note = {Poster presented at the <a
                  href="http://terraswarm.org/conferences/16/annual"
                  >2016 TerraSwarm Annual Meeting</a>.},
        abstract = {Ridesharing services often require constant
                  rebalancing of vehicle supplies in order to meet
                  passenger demand across the transportation
                  network. Current ridesharing services are mostly
                  provided by human drivers, where rebalancing is
                  controlled by setting price differences between
                  service regions so that drivers are incentivized
                  to relocate to regions with higher prices. In
                  recent years, there has been a growing interest in
                  introducing autonomous cars into ridesharing.
                  Since autonomous cars can receive commands from a
                  central authority and be directly dispatched, they
                  provide more flexibility in terms of control and
                  can potentially improve the efficiency of
                  rebalancing. In our poster, we present our work on
                  two topics in automated ridesharing. First, we
                  proposed a metric that quantifies the efficiency
                  gain of automated ridesharing by comparing the
                  total amount of vehicle flow required for
                  rebalancing. The proposed metric is independent of
                  the actual demand and only relies on properties of
                  the transportation network. We have also developed
                  a set of numerical tools for computing the metric,
                  which are applied to a case study of the
                  Washington, DC metropolitan area. Second, we
                  studied how to make use of predictions of future
                  passenger demand from historical data in order to
                  improve the service quality (measured by wait time
                  of passengers) of automated ridesharing. We
                  developed a data-driven distributionally robust
                  optimization framework to address the
                  uncertainties in demand prediction. We also showed
                  that the robust optimization problem can be
                  converted to an equivalent form for which
                  numerically efficient solutions are available. We
                  evaluate the performance of the data-driven
                  vehicle balancing framework based on four years of
                  taxi trip data from New York City.},
        URL = {http://terraswarm.org/pubs/860.html}
    }
    

Posted by Shuo Han on 26 Oct 2016.
Groups: services

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