论文标题
使用智能卡数据来识别人类流动性模式
Identifying Human Mobility Patterns using Smart Card Data
论文作者
论文摘要
人类流动性受到集体动态的约束,这是许多个人选择的结果。起源于促进自动票价收集的一种手段的智能卡数据已成为分析人类流动性模式的宝贵来源。已经采用了各种聚类和细分技术,并适用于从客运需求市场细分到城市活动位置的分析的应用。在本文中,我们根据其时间或时空特征以及使用模式来表征单个站点,线路或城市区域的研究,对公共交通用户的最新审查进行了系统的审查。此外,对文献的批判性综述揭示了关注旅行模式的人体内变异性与关注旅行模式跨性别变化的研究之间的重要区别。我们综合了关键分析方法,并基于确定和概述以下方向的进一步研究:(i)乘客旅行模式的预测; (ii)服务计划和政策评估的决策支持; (iii)增强了用户旅行模式的地理特征; (iv)从需求分析到行为分析。
Human mobility is subject to collective dynamics that are the outcome of numerous individual choices. Smart card data which originated as a means of facilitating automated fare collections has emerged as an invaluable source for analyzing human mobility patterns. A variety of clustering and segmentation techniques has been adopted and adapted for applications ranging from passenger demand market segmentation to the analysis of urban activity locations. In this paper we provide a systematic review of the state-of-the-art on clustering public transport users based on their temporal or spatial-temporal characteristics as well as studies that use the patter to characterize individual stations, lines or urban areas. Furthermore, a critical review of the literature reveals an important distinction between studies focusing on the intra-personal variability of travel patterns versus those concerned with the inter-personal variability of travel patterns. We synthesize the key analysis approaches and based on which identify and outline the following directions for further research: (i) predictions of passenger travel patterns; (ii) decision support for service planning and policy evaluation; (iii) enhanced geographical characterization of users' travel patterns; (iv) from demand analytics towards behavioral analytics.