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Optimizing the Profitability and Quality of Service in Carshare Systems Under Demand Uncertainty

机译:在需求不确定性下优化汽车共享系统的盈利能力和服务质量

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Carsharing has been considered as an effective means to increase mobility and reduce personal vehicle usage and related carbon emissions. In this paper, we consider problems of allocating a carshare fleet to service zones under uncertain one-way and round-trip rental demand. We employ a two-stage stochastic integer programming model, in the first stage of which we allocate shared vehicle fleet and purchase parking lots or permits in reservation-based or free-floating systems. In the second stage, we generate a finite set of samples to represent demand uncertainty and construct a spatial-temporal network for each sample to model vehicle movement and the corresponding rental revenue, operating cost, and penalties from unserved demand. We minimize the expected total costs minus profit and develop branch-and-cut algorithms with mixed-integer, rounding-enhanced Benders cuts, which can significantly improve computation efficiency when implemented in parallel computing. We apply our model to a data set of Zipcar in the Boston-Cambridge, Massachusetts, area to demonstrate the efficacy of our approaches and draw insights on carshare management. Our results show that exogenously given one-way demand can increase carshare profitability under given one-way and round-trip price differences and vehicle relocation cost whereas endogenously generated one-way demand as a result of pricing and strategic customer behavior may decrease carshare profitability. Our model can also be applied in a rolling-horizon framework to deliver optimized vehicle relocation decisions and achieve significant improvement over an intuitive fleet-rebalancing policy.
机译:共享汽车已被认为是增加机动性并减少私人车辆使用和相关碳排放的有效手段。在本文中,我们考虑在不确定的单向和往返租赁需求下将汽车共享车队分配到服务区的问题。我们采用两阶段随机整数规划模型,在该模型的第一阶段中,我们分配共享车队,并在基于预订或自由浮动的系统中购买停车场或许可证。在第二阶段,我们生成有限的样本集来表示需求不确定性,并为每个样本构建一个时空网络,以对车辆移动以及相应的租金收入,运营成本和未满足需求的罚款进行建模。我们将预期总成本减去利润降至最低,并使用混合整数,四舍五入的Benders切割开发分支切割算法,当在并行计算中实现时,该算法可以显着提高计算效率。我们将模型应用于马萨诸塞州波士顿-剑桥地区的Zipcar数据集,以证明我们的方法的有效性,并在汽车共享管理上得出见解。我们的结果表明,在给定的单向和往返价格差和车辆重新安置成本的情况下,外生给定的单向需求可以提高汽车共享的获利能力,而定价和战略客户行为的结果是内生产生的单向需求可能会降低同享汽车的获利能力。我们的模型还可以应用于水平滚动框架中,以提供优化的车辆重新布置决策,并在直观的车队重新平衡策略上实现重大改进。

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