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QA-share: Towards efficient QoS-aware dispatching approach for urban taxi-sharing

机译:QA-Share:对城市出租车分享有效的QoS感知调度方法

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Taxi-sharing allows occupied taxis to pick up new passengers on the fly, promising to reduce waiting time for taxi riders and increase productivity for drivers. However, if not carefully designed, taxi-sharing may cause more harm than benefit - it becomes harder to strike the balance between driver's profit and passenger's quality of service (e.g. travel time, number of strangers that share a taxi, etc.). In this paper, we propose a QoS-aware taxi-sharing system design - QA-Share - by addressing two important challenges. First, QA-Share aims to maximize driver profit and user experience at the same time. Second, QA-Share continuously optimizes these two metrics by dynamically adapting its schedule as new requests arrive, without entering an oscillation state. To address these two challenges, we have formulated the optimization problem using integer linear programming, and derived the optimal solution under a small system scale. When the number of requests and taxis becomes large, we have devised a heuristic algorithm that has a much faster execution time. We have also studied how to minimize oscillations caused by schedule re-calculations by dynamically tuning the update threshold. We have evaluated our approach with real-world dataset in a Chinese city - ZhenJiang - which contains the GPS traces recorded by over 3,000 taxis during a period of three months in 2013. Our results show that the QoS and profit is increased by 38% compared to earlier schemes.
机译:出租车共享允许占用的出租车拿起新乘客上的苍蝇,前途,以减少出租车乘客等待时间,提高生产效率司机。但是,如果没有精心设计的,出租车共享可能会造成比好处更大的伤害 - 它变得更难打司机的利润和服务的乘客质量之间的平衡(例如旅行时间,共用了一辆出租车,等陌生人的号码)。在本文中,我们提出了一个QoS感知的出租车共享系统设计 - QA-分享 - 通过解决两个重要的挑战。首先,QA-分享旨在最大限度地提高驾驶员的利润和用户体验的同时。其次,QA-占有率不断通过动态调整其时间表,新的请求到达,而不进入振荡状态优化这两个指标。为了应对这两项挑战,我们已经制定了利用整数线性规划的优化问题,并得出一个小的系统规模下的最优解决方案。当请求和出租车的数量变大,我们设计了一个启发式算法具有更快的执行时间。我们还研究了如何最大限度地减少通过动态调整更新门槛造成的时间表重新计算振荡。我们已经评估了我们的现实世界的数据集的方式在中国的城市 - 镇江 - 包含在一段2013年我们的研究结果三个月内超过3000辆出租车记录的GPS轨迹表明,QoS和利润增加38%早期方案。

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