论文标题
用于骑车平台的书籍和供应管理
Book-Ahead & Supply Management for Ridesourcing Platforms
论文作者
论文摘要
RideSourcing Platforms最近推出了``安排乘车''服务,乘客可以在旅途中保留(书本)。预订提供平台的精确信息,描述了预期未来旅行的开始时间和位置;反过来,平台可以使用此信息来调整驾驶员供应的可用性和空间分布。在本文中,我们提出了一个框架,用于建模/分析随机随机骑行系统中的预订。我们认为,驾驶员供应分布在地理区域网络上,而书本乘车比非保留的游乐设施达到了优先级。首先,我们提出了一项依赖于州的录取控制政策,将驾驶员分配给乘客;该政策可确保将达到时间服务的访问时间达到预期乘车。其次,考虑到每个区域中的入院控制政策和预订信息,我们预测了(将来)所需的``目标''数量``目标''数量``目标'',以确保临时访问的时间服务的到达时间服务需求。随机性非保留的乘车行驶。第三,我们提出了一种反应性调度/重新平衡机制,该机制使用对驾驶员供应的范围进行质量的范围,以维护驾驶员的范围,以维护驾驶员的范围,以维护跨度的质量。曼哈顿的游乐设施表现出闲置驱动因素的数量如何随着书籍的骑行而降低。
Ridesourcing platforms recently introduced the ``schedule a ride'' service where passengers may reserve (book-ahead) a ride in advance of their trip. Reservations give platforms precise information that describes the start time and location of anticipated future trips; in turn, platforms can use this information to adjust the availability and spatial distribution of the driver supply. In this article, we propose a framework for modeling/analyzing reservations in time-varying stochastic ridesourcing systems. We consider that the driver supply is distributed over a network of geographic regions and that book-ahead rides have reach time priority over non-reserved rides. First, we propose a state-dependent admission control policy that assigns drivers to passengers; this policy ensures that the reach time service requirement would be attained for book-ahead rides. Second, given the admission control policy and reservations information in each region, we predict the ``target" number of drivers that is required (in the future) to probabilistically guarantee the reach time service requirement for stochastic non-reserved rides. Third, we propose a reactive dispatching/rebalancing mechanism that determines the adjustments to the driver supply that are needed to maintain the targets across regions. For a specific reach time quality of service, simulation results using data from Lyft rides in Manhattan exhibit how the number of idle drivers decreases with the fraction of book-ahead rides. We also observe that the non-stationary demand (ride request) rate varies significantly across time; this rapid variation further illustrates that time-dependent models are needed for operational analysis of ridesourcing systems.