Abstract

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.

Highlights

  • Understanding human mobility pattern is a longstanding scientific pursuit of mankind [1,2,3,4,5]

  • We further show the entries of V whose magnitudes exceed the threshold for the two data sets in Fig 10, after the rows of V are sorted by the variance of their corresponding Aggregate bike flow (ABF)

  • By analyzing the bike flow datasets from the two cities, we found statistical regularities underlying the irregular surface of the bike flow data

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Summary

Introduction

Understanding human mobility pattern is a longstanding scientific pursuit of mankind [1,2,3,4,5]. Many new data resource, such as GPS trajectory [6,7,8] and mobile phone data [3, 9, 10], are nowadays powerful social microscopes that bring new opportunities for us to study human mobility in new mediums, allowing to “photograph” the main aspects of the society and to create a comprehensive picture of human mobility behavior. The Bicycle Sharing System (BSS) has been spreading over 1,000 cities around the world [11] as a powerful approach to improve the first/last mile connection to other transportations. Human mobility in emerging Bicycle Sharing Systems the National Science Foundation under Grant CMMI-1536398 Comparing with the first-generation BSS such as the White Bicycle Plan deployed in Amsterdam in 1960s, the third generation BSS highlights the integration of information technology that enables users to borrow

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