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Identifying and Optimizing Relocation Regions in One-Way Carsharing System

机译:单向车库系统中识别和优化重定位区域

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The imbalance between vehicle supply and user demand in the spatial-temporal dimension is the most relevant problem in a station-based one-way carsharing system (OWCS). To compensate for this disequilibrium, vehicle relocations are highly important. Previous studies have proposed the simulation-optimization model for relocation operations. Little attention has been paid to the clustering problem for intra-regional relocations in OWCS. Based on the K-medoids algorithm and the optimization theory, this paper proposed a two-stage clustering algorithm of dynamically dividing all OWCS stations into a certain number of economic relocation regions, so that there is operational feasibility for dispatchers and a balance between supply and demand within those relocation regions. In the case study, the algorithm has been tested on the largest electric vehicle Car-sharing corporation, EVCARD, in Jiading district, Shanghai. Stations are divided into 15 relocation regions. Results show that it is feasible for dispatchers in management. It also indicates that the supply of each region is greater than the demand, and the dispatcher only needs to relocate vehicles within the region.
机译:在空间 - 时间维度中的车辆供应和用户需求之间的不平衡是基于站的单向卡路验系统(OWC)中最相关的问题。为了弥补这种不平衡,车辆迁移非常重要。以前的研究提出了用于搬迁操作的仿真优化模型。对于OWC中的区域内部重新定位,已经支付了很少的关注。基于K-METOIDS算法和优化理论,提出了一种双级聚类算法,将所有OWCS站动态划分为一定数量的经济重定位区域,因此调度员的运行可行性和供应之间的平衡在这些搬迁区域内的需求。在案例研究中,该算法已在上海嘉定区埃卡特州最大的电动汽车汽车共享公司进行测试。站分为15个重定位区域。结果表明,管理员在管理层中是可行的。它还表明每个区域的供应大于需求,并且调度员仅需要将该区域内的车辆重新定位。

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