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Statistical patterns of human mobility in emerging Bicycle Sharing Systems

机译:新兴的自行车共享系统中人员流动​​的统计模式

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摘要

The emerging Bicycle Sharing System (BSS) provides a new social microscope that allows us to “photograph” the main aspects of the society and to create a comprehensive picture of human mobility behavior in this new medium. BSS has been deployed in many major cities around the world as a short-distance trip supplement for public transportations and private vehicles. A unique value of the bike flow data generated by these BSSs is to understand the human mobility in a short-distance trip. This understanding of the population on short-distance trip is lacking, limiting our capacity in management and operation of BSSs. Many existing operations research and management methods for BSS impose assumptions that emphasize statistical simplicity and homogeneity. Therefore, a deep understanding of the statistical patterns embedded in the bike flow data is an urgent and overriding issue to inform decision-makings for a variety of problems including traffic prediction, station placement, bike reallocation, and anomaly detection. In this paper, we aim to conduct a comprehensive analysis of the bike flow data using two large datasets collected in Chicago and Hangzhou over months. Our analysis reveals intrinsic structures of the bike flow data and regularities in both spatial and temporal scales such as a community structure and a taxonomy of the eigen-bike-flows.
机译:新兴的自行车共享系统(BSS)提供了一种新的社会显微镜,使我们能够“拍摄”社会的主要方面,并在这种新媒介中创建人类活动行为的综合图景。 BSS已在全球许多主要城市中部署,作为公共交通和私人车辆的短途旅行补充。这些BSS生成的自行车流量数据的唯一价值是了解短途旅行中的人员流动性。缺乏对短途旅行人口的了解,这限制了我们在BSS的管理和运营方面的能力。许多现有的BSS运营研究和管理方法都采用了强调统计简单性和同质性的假设。因此,深入了解嵌入在自行车流量数据中的统计模式是一个紧迫而首要的问题,可以为各种问题的决策提供信息,包括交通预测,车站位置,自行车重新分配和异常检测。在本文中,我们旨在使用两个月来在芝加哥和杭州收集的两个大型数据集对自行车流量数据进行全面分析。我们的分析揭示了自行车流量数据的内在结构和时空尺度的规律性,例如社区结构和本征自行车流的分类法。

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