...
首页> 外文期刊>Procedia Computer Science >Impacts of integrating shared autonomous vehicles into a Peer-to-Peer ridesharing system
【24h】

Impacts of integrating shared autonomous vehicles into a Peer-to-Peer ridesharing system

机译:将共享自动车辆集成到对等riveShiing系统中的影响

获取原文
           

摘要

As public perception of sharing economy in transportation has changed, mobilephone-hailed ridesharing is gaining prominence. The key aspect of capitalizing and promoting better shared-mobility systems depends on the matching rate between the supply and demand for rides. Peer-to-peer (P2P) ridesharing systems devise higher matching rate than pure ridesharing systems by attracting more drivers. Even relaxing the spatiotemporal constraints for participants could increase the chances to be matched. However, we notice that sole P2P ridesharing systems still do not guarantee matching when the number of drivers is limited. We propose the utilization of a fleet service to cover the unmatched riders in P2P ridesharing. While it can be any type of fleet services such as taxis, Uber/Lyft, or paratransit, we explore the idea of utilizing shared autonomous vehicles as a fleet, as they can be dispatched without labor. We model an integrated system for P2P ridesharing and shared autonomous fleet vehicles (SAFVs). The proposed algorithm is designed to maximize matching ratio while optimizing the number of required SAFVs. Based on a simulated study on the northern Los Angeles, the integrated shared-mobility system is shown to have high potential to serve a high fraction of riders.
机译:随着公众对交通经济的公众感知发生了变化,Mobilephone-HaIled RideShing正在突出。资本化和促进更好的共享移动系统的关键方面取决于乘坐供需的匹配率。点对点(P2P)riveShiing系统通过吸引更多驱动程序,设计比纯riveShiens系统更高的匹配速率。甚至放松时尚的参与者的限制也可以增加匹配的机会。但是,我们注意到当驾驶员数量有限时,唯一的P2P riveShiens系统仍然不保证匹配。我们提出了利用舰队服务,以覆盖P2P riveShiening中的无与伦比的车手。虽然它可以是出租车,超级/ Lyft或Paratransit等任何类型的舰队服务,我们探索利用共享自动车辆作为舰队的想法,因为它们可以在没有劳动的情况下发货。我们为P2P riveShiing和共享自治车辆(SAFV)的集成系统进行了模型。该算法旨在最大化匹配比率,同时优化所需SAFV的数量。基于洛杉矶北部的模拟研究,综合共享流动系统被证明具有高潜力,可为高级车手提供服务。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号