Online Stochastic Planning for Taxi and Ridesharing

C. Manna, S. Prestwich
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引用次数: 13

Abstract

In this paper we consider the problem of on-line stochastic ride-sharing and taxi-sharing with time windows. We study a scenario in which people needing a taxi, or a ride, assign their source and destination points plus other restrictions (such as earlier time to departure and maximum time to reach a destination), at the same time, there are taxis or drivers interested in providing a ride (also with departure and destination points, vehicle capacity and time restrictions). We model the time window restrictions as a soft constraint (a reasonable delay might be acceptable in a realistic scenario), and consider the problem as an on-line continual planning problem, in which additional ride requests may arrive while plans for previous ride-matching are being executed. Finally, such new requests may arrive at each time step with some probability. The aim is to maximize the shared trips while minimising the expected travel delay for each trip. In this paper we propose an on-line stochastic optimization planning approach in which instead of myopically optimising for the offered trips and requested trips that are known, incorporate information that partially describes the stochastic future into the model in order to improve the quality of the solution. We prove the effectiveness of the method in a real world scenario using a number of instances extracted from a travel survey in north-eastern Illinois (USA) conducted by the Chicago Metropolitan Agency for Planning.
出租车与拼车的在线随机规划
本文研究带时间窗的在线随机拼车和出租车问题。我们研究了一个场景,在这个场景中,需要出租车或乘车的人指定了他们的出发地和目的地以及其他限制(如更早的出发时间和到达目的地的最大时间),同时,有出租车或司机有兴趣提供乘车服务(也有出发地和目的地、车辆容量和时间限制)。我们将时间窗口限制建模为软约束(在现实场景中合理的延迟可能是可接受的),并将该问题视为在线连续规划问题,其中在执行先前乘车匹配的计划时,可能会出现额外的乘车请求。最后,这些新请求可能以一定的概率到达每个时间步。这样做的目的是最大化共享行程,同时最小化每次行程的预期旅行延误。在本文中,我们提出了一种在线随机优化规划方法,该方法不是对已知的提供行程和请求行程进行短视优化,而是将部分描述随机未来的信息纳入模型,以提高解决方案的质量。我们用芝加哥都市规划局在美国伊利诺斯州东北部进行的旅行调查中提取的一些实例,证明了该方法在现实世界场景中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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