Variability in Regularity: Mining Temporal Mobility Patterns in London, Singapore and Beijing Using Smart-Card Data

PLoS One. 2016 Feb 12;11(2):e0149222. doi: 10.1371/journal.pone.0149222. eCollection 2016.

Abstract

To discover regularities in human mobility is of fundamental importance to our understanding of urban dynamics, and essential to city and transport planning, urban management and policymaking. Previous research has revealed universal regularities at mainly aggregated spatio-temporal scales but when we zoom into finer scales, considerable heterogeneity and diversity is observed instead. The fundamental question we address in this paper is at what scales are the regularities we detect stable, explicable, and sustainable. This paper thus proposes a basic measure of variability to assess the stability of such regularities focusing mainly on changes over a range of temporal scales. We demonstrate this by comparing regularities in the urban mobility patterns in three world cities, namely London, Singapore and Beijing using one-week of smart-card data. The results show that variations in regularity scale as non-linear functions of the temporal resolution, which we measure over a scale from 1 minute to 24 hours thus reflecting the diurnal cycle of human mobility. A particularly dramatic increase in variability occurs up to the temporal scale of about 15 minutes in all three cities and this implies that limits exist when we look forward or backward with respect to making short-term predictions. The degree of regularity varies in fact from city to city with Beijing and Singapore showing higher regularity in comparison to London across all temporal scales. A detailed discussion is provided, which relates the analysis to various characteristics of the three cities. In summary, this work contributes to a deeper understanding of regularities in patterns of transit use from variations in volumes of travellers entering subway stations, it establishes a generic analytical framework for comparative studies using urban mobility data, and it provides key points for the management of variability by policy-makers intent on for making the travel experience more amenable.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Beijing
  • Humans
  • London
  • Pattern Recognition, Automated
  • Singapore
  • Time Factors
  • Transportation*
  • Urbanization*

Grants and funding

This work was co-funded by the European Research Council (https://erc.europa.eu/) under 249393-ERC-2009-AdG (PI: Michael Batty) and the National Natural Science Foundation of China(http://www.nsfc.gov.cn/) under grant number: 51408029 (PI: Feng Chen). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.