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Dynamic ride-sharing and fleet sizing for a system of shared autonomous vehicles in Austin, Texas

机译:在得克萨斯州奥斯丁的共享自动驾驶汽车系统的动态乘车共享和车队规模调整

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Shared autonomous (fully-automated) vehicles (SAVs) represent an emerging transportation mode for driverless and on-demand transport. Early actors include Google and Europe's CityMobil2, who seek pilot deployments in low-speed settings. This work investigates SAVs' potential for U.S. urban areas via multiple applications across the Austin, Texas, network. This work describes advances to existing agent- and network-based SAV simulations by enabling dynamic ride-sharing (DRS, which pools multiple travelers with similar origins, destinations and departure times in the same vehicle), optimizing fleet sizing, and anticipating profitability for operators in settings with no speed limitations on the vehicles and at adoption levels below 10 % of all personal trip-making in the region. Results suggest that DRS reduces average service times (wait times plus in-vehicle travel times) and travel costs for SAV users, even after accounting for extra passenger pick-ups, drop-offs and non-direct routings. While the base-case scenario (serving 56,324 person-trips per day, on average) suggest that a fleet of SAVs allowing for DRS may result in vehicle-miles traveled (VMT) that exceed person-trip miles demanded (due to anticipatory relocations of empty vehicles, between trip calls), it is possible to reduce overall VMT as trip-making intensity (SAV membership) rises and/or DRS users become more flexible in their trip timing and routing. Indeed, DRS appears critical to avoiding new congestion problems, since VMT may increase by over 8 % without any ride-sharing. Finally, these simulation results suggest that a private fleet operator paying $70,000 per new SAV could earn a 19 % annual (long-term) return on investment while offering SAV services at $1.00 per mile for a non-shared trip (which is less than a third of Austin's average taxi cab fare).
机译:共享的自动(全自动)车辆(SAV)代表了无人驾驶和按需运输的新兴运输模式。早期的参与者包括Google和欧洲的CityMobil2,他们寻求在低速环境下进行试点部署。这项工作通过德克萨斯州奥斯汀市网络上的多个应用程序来研究SAV在美国城市地区的潜力。这项工作描述了现有的基于代理和基于网络的SAV模拟的进展,方法是实现动态乘车共享(DRS,该乘员在同一车辆中汇集具有相似出发地,目的地和出发时间的多个旅行者),优化车队规模并为运营商预测盈利能力在没有速度限制的环境中,采用率低于该地区所有个人出行的10%。结果表明,即使考虑到额外的乘客上落,下车和非直接路线,DRS也会减少SAV用户的平均服务时间(等待时间加上车载旅行时间)和旅行成本。虽然基本情况(平均每天服务56,324人次)表明,允许DRS的SAV车队可能导致行进的车辆英里数(VMT)超过了所需的人行里程(由于预期搬迁)空车,在两次旅行之间),随着旅行制定强度(SAV会员资格)的增加和/或DRS用户在旅行时间和路线上变得更加灵活,可以降低整体VMT。确实,DRS对于避免新的拥堵问题显得至关重要,因为VMT可能会增加8%以上,而无需任何乘车共享。最后,这些模拟结果表明,每辆新SAV支付70,000美元的私人车队运营商可以实现19%的年度(长期)投资回报率,同时以每英里1.00美元的非共享行程提供SAV服务(低于奥斯汀出租车平均车费的三分之一)。

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