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A method for private car transportation dispatching based on a passenger demand model

机译:一种基于乘客需求模型的私人汽车运输调度方法

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摘要

Although the demand for taxis is increasing rapidly with the soaring population in big cities, the number of taxis grows relatively slowly during these years. In this context, private transportation such as Uber is emerging as a flexible business model, supplementary to the regular form of taxis. At present, much workmainly focuses on the reduction or minimization of taxi cruising miles. However, these taxi-based approaches have some limitations in the case of private car transportation because they do not fully utilize the order information available from the new type of business model. In this paper we present a dispatching method that reduces further the cruising mileage of private car transportation, based on a passenger demand model. In particular, we partition an urban area into many separate regions by using a spatial clustering algorithm and divide a day into several time slots according to the statistics of historical orders. Locally Weighted Linear Regression is adopted to depict the passenger demand model for a given region over a time slot. Finally, a dispatching process is formalized as a weighted bipartite graph matching problem and we then leverage our dispatching approach to schedule private vehicles. We assess our approach through several experiments using real datasets derived from a private car hiring company in China. The experimental results show that up to 74% accuracy could be achieved on passenger demand inference. Additionally, the conducted simulation tests demonstrate a 22.5% reduction of cruising mileage.
机译:尽管随着大城市人口的激增,出租车的需求迅速增长,但这些年来出租车的数量增长相对缓慢。在这种情况下,诸如Uber之类的私人交通正在成为一种灵活的商业模式,作为常规出租车的补充。目前,许多工作主要集中在减少或最小化出租车续航里程上。但是,这些基于出租车的方法在私家车运输方面有一些局限性,因为它们没有充分利用新型商业模型中的可用订单信息。在本文中,我们提出了一种基于乘客需求模型的调度方法,该方法可进一步降低私家车运输的续航里程。特别是,我们通过使用空间聚类算法将市区划分为许多单独的区域,并根据历史顺序的统计将一天划分为几个时隙。采用局部加权线性回归来描述某个时段内给定区域的乘客需求模型。最后,将调度过程形式化为加权二部图匹配问题,然后我们利用调度方法来调度私人车辆。我们使用来自中国一家私人汽车租赁公司的真实数据集,通过几次实验评估了我们的方法。实验结果表明,根据乘客需求推断可以达到74%的精度。此外,进行的模拟测试表明,续航里程减少了22.5%。

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