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Book-ahead & supply management for ridesourcing platforms

机译:用于郊游平台的预订和供应管理

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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.
机译:浪商平台最近介绍了“安排乘坐”服务,乘客可以预订(预订)在旅行前乘车。预订给出平台的精确信息,描述了预期未来旅行的开始时间和位置;反过来,平台可以使用这些信息来调整驱动器电源的可用性和空间分布。在本文中,我们提出了一个框架,用于在时变随机郊游系统中建立/分析预留。我们认为驾驶电源分布在地理区域网络上,并在非保留游乐设施上达到了额度优先级的驾驶员。首先,我们提出了一个国家依赖的录取控制政策,将司机分配给乘客;此政策确保将达到达到时间服务要求,以便预订预订骑行。其次,考虑到每个区域中的录取控制策略和预订信息,我们预测所需的“目标”的驱动程序数量,概率地保证随机非保留游乐设施的覆盖时间服务要求。第三,我们提出了一种反应性调度/重新平衡机制,决定了对维持地区目标所需的驾驶员供应的调整。对于特定达到的服务质量,使用来自曼哈顿的Lyft乘坐的数据的仿真结果表现出怠速驱动器的数量如何随着书籍前方游乐设施的一小部分而降低。我们还观察到,非静止需求(乘车请求)率越差显着变化;这种快速变化进一步说明了郊游系统的操作分析所需的时间依赖模型。

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