里斯本自行车共享系统再平衡优化的自行车需求预测

A. Afonso, J. Pires, Nuno Datia, Fernando Birra
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引用次数: 0

摘要

随着城市的发展,共享单车系统越来越多地被用作避免汽车造成交通拥堵的一种方式,促进可持续的交通,并有助于减少城市地区的交通和污染。在系统的站点上,自行车和码头的可用性不平衡,使得自行车的租赁和归还变得不可能,因此有必要在整个网络中重新分配它们。然而,这一过程存在缺陷,主要是在高峰时段。在本文中,我们分析了里斯本市议会提供的关于其自行车共享系统的数据,该系统具有再平衡操作的影响。由于原始数据受到再平衡操作的污染,因此进行了一次分析,试图从数据中消除这种影响。在此分析之后,仅使用行程数据创建了一个新数据集,以便为每个站点开发模型并预测自行车需求。然后对创建的数据集中的高原进行分析,以确定它们是由于客户缺乏需求,还是由于车站已满或空。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bicycle Demand Prediction to Optimize the Rebalancing of a Bike Sharing System in Lisbon
With urban development in cities, shared bicycle systems are increasingly used as a way to avoid traffic caused by cars, promoting sustainable mobility and contributing for traffic and pollution reduction in urban areas. The imbalance in the availability of bicycles and docks at the stations of the systems makes it impossible to rent and return bicycles, making it necessary to redistribute them across the network. However, this process has flaws, mainly during rush hours. In this paper, we analyse data provided by the Lisbon City Council regarding their bike sharing system, which has the rebalancing operations' influence. Since the original data was contaminated with the rebalancing operations, an analysis was conducted in an attempt to remove this influence from the data. Following this analysis, a new dataset was created using only the trip data to enable model development for each station and predict the bicycle demand. The plateaus in the created dataset were then analysed to determine if they're due to lack of demand from costumers, or due to stations being full or empty.
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