Mobile phone data in transportation research: methods for benchmarking against other data sources

被引:0
作者
Andreas Dypvik Landmark
Petter Arnesen
Carl-Johan Södersten
Odd André Hjelkrem
机构
[1] SINTEF,Department of Technology Management
[2] SINTEF,Department of Mobility and Economics
来源
Transportation | 2021年 / 48卷
关键词
Mobile phone data; Origin–destination (OD) estimation; Travel surveys;
D O I
暂无
中图分类号
学科分类号
摘要
The ubiquity of personal cellular phones in society has led to a surging interest in using Big Data generated by mobile phones in transport research. Studies have suggested that the vast amount of data could be used to estimate origin–destination (OD) matrices, thereby potentially replacing traditional data sources such as travel surveys. However, constructing OD matrices from mobile phone data (MPD) entails multiple challenges, and the lack of ground truth hampers the evaluation and validation of the estimated matrices. Furthermore, national laws may prohibit the distribution of MPD for research purposes, compelling researchers to work with pre-compiled OD matrices with no insight into the methods used. In this paper, we analyse a set of such pre-compiled OD matrices from the greater Oslo area and perform validation procedures against several sources to assess the quality and robustness of the OD matrices as well as their usefulness in transportation planning applications. We find that while the OD matrices correlate well with other sources at a low resolution, the reliability decreases when a finer level of detail is chosen, particularly when comparing shorter trips between neighbouring areas. Our results suggest that coarseness of data and privacy concerns restrict the usefulness of MPD in transport research in the case where OD matrices are pre-compiled by the operator.
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页码:2883 / 2905
页数:22
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  • [1] Aguiléra V(2014)Using cell phone data to measure quality of service and passenger flows of Paris transit system Transp. Res. Part C Emerg. Technol. 43 198-211
  • [2] Allio S(2010)Daily rhythms of suburban commuters’ movements in the Tallinn metropolitan area: case study with mobile positioning data Transp. Res. Part C Emerg. Technol. 18 45-54
  • [3] Benezech V(2015)Origin–destination trips by purpose and time of day inferred from mobile phone data Transp. Res. Part C Emerg. Technol. 58 240-250
  • [4] Combes F(2019)Inferring dynamic origin–destination flows by transport mode using mobile phone data Transp. Res. Part C Emerg. Technol. 101 254-275
  • [5] Milion C(2019)Mobile phone records to feed activity-based travel demand models: MATSim for studying a cordon toll policy in Barcelona Transp. Res. Part A Policy Pract. 121 56-74
  • [6] Ahas R(2013)Human mobility characterization from cellular network data Commun. ACM 56 74-82
  • [7] Aasa A(2011)Estimating origin–destination flows using mobile phone location data IEEE Pervasive Comput. 10 36-44
  • [8] Silm S(2013)Understanding individual mobility patterns from urban sensing data: a mobile phone trace example Transp. Res. Part C Emerg. Technol. 26 301-313
  • [9] Tiru M(2016)The promises of big data and small data for travel behavior (aka human mobility) analysis Transp. Res. Part C Emerg. Technol. 68 285-299
  • [10] Alexander L(2015)Allaboard: visual exploration of cellphone mobility data to optimise public transport IEEE Trans. Visual Comput. Graph. 22 1036-1050