基于中心站的共享单车需求预测

Jianbin Huang, Xiangyu Wang, Heli Sun
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引用次数: 5

摘要

预测自行车需求有助于平衡自行车,提高共享单车系统的服务质量。很多工作都集中在预测所有站点的自行车需求上。这是不必要的,因为随着站点数量的增加,再平衡操作的旅行成本会急剧增加。在本文中,我们更多地关注那些自行车需求量较大的站点,在下面的叙述中我们称之为“中心站点”。我们提出了一个基于我们定义的中心站来预测每小时自行车需求的框架。首先,我们提出了一种新的聚类算法,将不同类型的站点分配到每个聚类中。其次,提出了一种分层预测模型,对每个集群和每个中心站的小时自行车需求进行逐级预测。纽约市Citi Bike系统的实验结果显示了我们的方法在解决这些问题上的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Central Station Based Demand Prediction in a Bike Sharing System
Predicting the bike demand can help rebalance the bikes and improve the service quality of a bike sharing system. A lot of work focuses on predicting the bike demand for all the stations. It is not necessary because the travel cost of rebalance operations increases sharply as the number of stations increases. In this paper, we take more attention to those stations with higher bike demand, which are called "central stations" in the following narrative. We propose a framework to predict the hourly bike demand based on the central stations we define. Firstly, we propose a novel clustering algorithm to assign different types of stations into each cluster. Secondly, we propose a hierarchical prediction model to predict the hourly bike demand for every cluster and each central station progressively. The experimental results on the NYC Citi Bike system show the advantages of our approach to these problems.
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