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On-demand high-capacity ride-sharing via dynamic trip-vehicle assignment

机译:通过动态行车分配按需高容量乘车共享

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摘要

Ride-sharing services are transforming urban mobility by providing timely and convenient transportation to anybody, anywhere, and anytime. These services present enormous potential for positive societal impacts with respect to pollution, energy consumption, congestion, etc. Current mathematical models, however, do not fully address the potential of ride-sharing. Recently, a large-scale study highlighted some of the benefits of car pooling but was limited to static routes with two riders per vehicle (optimally) or three (with heuristics). We present a more general mathematical model for real-time high-capacity ride-sharing that (i) scales to large numbers of passengers and trips and (ii) dynamically generates optimal routes with respect to online demand and vehicle locations. The algorithm starts from a greedy assignment and improves it through a constrained optimization, quickly returning solutions of good quality and converging to the optimal assignment over time. We quantify experimentally the tradeoff between fleet size, capacity, waiting time, travel delay, and operational costs for low- to medium-capacity vehicles, such as taxis and van shuttles. The algorithm is validated with ∼3 million rides extracted from the New York City taxicab public dataset. Our experimental study considers ride-sharing with rider capacity of up to 10 simultaneous passengers per vehicle. The algorithm applies to fleets of autonomous vehicles and also incorporates rebalancing of idling vehicles to areas of high demand. This framework is general and can be used for many real-time multivehicle, multitask assignment problems.
机译:乘车共享服务通过向任何人,任何地点,任何时间提供及时,便捷的交通,正在改变城市的出行方式。这些服务在污染,能源消耗,交通拥堵等方面具有巨大的潜在的积极的社会影响。但是,当前的数学模型并未完全解决乘车共享的潜力。最近,一项大规模研究强调了拼车的一些好处,但仅限于静态路线,每辆车两个骑手(最佳)或三个(启发式)车手。我们为实时大容量乘车共享提供了一个更通用的数学模型,该模型(i)可扩展至大量乘客和旅程,并且(ii)动态生成关于在线需求和车辆位置的最佳路线。该算法从贪婪的分配开始,并通过有约束的优化对其进行改进,快速返回优质解决方案,并随着时间收敛到最佳分配。我们通过实验量化了中低容量车辆(例如出租车和货车)的车队规模,容量,等待时间,旅行延误和运营成本之间的权衡。从纽约市出租车公共数据集提取的约300万次乘车中验证了该算法。我们的实验研究考虑了每辆车最多可容纳10位同时乘客的乘车共享。该算法适用于无人驾驶车辆的车队,并且还将怠速车辆的重新平衡纳入高需求区域。该框架是通用的,可用于许多实时多车多任务分配问题。

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