Travel mode imputation using GPS and accelerometer data from a multi-day travel survey

被引:14
|
作者
Broach, Joseph [1 ]
Dill, Jennifer [1 ]
McNeil, Nathan Winslow [1 ]
机构
[1] Portland State Univ, Nohad A Toulon Sch Urban Studies & Planning, POB 751 USP, Portland, OR 97207 USA
关键词
GLOBAL POSITIONING SYSTEMS; TRANSPORTATION MODE; BEHAVIOR;
D O I
10.1016/j.jtrangeo.2019.06.001
中图分类号
F [经济];
学科分类号
02 ;
摘要
Over the past decade, interest has grown in using Global Positioning System (GPS) data to augment or even to replace traditional travel survey or activity diaries. If the full potential of this new class of data is to be realized, processing techniques will need to be standardized and automated to some degree. This paper develops a multinomial logit (MNL) model to impute travel mode from GPS and hip-mounted accelerometer data. The MNL model is the workhorse of travel demand modeling, but it has rarely been applied to GPS data processing. A web-based recall survey provided over 900 trips for estimation and 500 plus trips for validation from a larger multi-day GPS travel survey in Portland, Oregon. Special attention is given to the imputation of bicycle travel, the identification of which has been given little attention in the North American context. We also apply two existing non-MNL mode imputation models to our Portland data and to compare and test the broader transferability of specific techniques. We find that the MNL model as specified performs well overall, generally outperforming competing model forms on the Portland GPS data. Transit network data and accelerometer data significantly improve model fit for specific modes. Accelerometer data is found in particular to aid model fit for bicycling; however, external validation results were less clear. No benefit is found to segmenting models by traveler age, although not all age groups were covered by the sample. The MNL model shows strong potential for automated GPS processing and, as a commonly used transportation modeling technique, should be relatively easy to implement elsewhere.
引用
收藏
页码:194 / 204
页数:11
相关论文
共 50 条
  • [1] Travel time budgets: new evidence from multi-year, multi-day data
    Peter R. Stopher
    Asif Ahmed
    Wen Liu
    Transportation, 2017, 44 : 1069 - 1082
  • [2] Travel time budgets: new evidence from multi-year, multi-day data
    Stopher, Peter R.
    Ahmed, Asif
    Liu, Wen
    TRANSPORTATION, 2017, 44 (05) : 1069 - 1082
  • [3] Analysis of travel mode choice and trip chain pattern relationships based on multi-day GPS data: A case study in Shanghai, China
    Huang, Yuqiao
    Gao, Linjie
    Ni, Anning
    Liu, Xiaoning
    JOURNAL OF TRANSPORT GEOGRAPHY, 2021, 93
  • [4] Hierarchical process of travel mode imputation from GPS data in a motorcycle-dependent area
    Minh Hieu Nguyen
    Armoogum, Jimmy
    TRAVEL BEHAVIOUR AND SOCIETY, 2020, 21 : 109 - 120
  • [5] Analysis of groups' multi-day leisure travel behaviors
    Shi, Jing
    Long, Yuxi
    Xin, Lei
    JOURNAL OF LEISURE RESEARCH, 2022, 53 (05) : 748 - 767
  • [6] Multi-day activity-travel pattern sampling based on single-day data
    Zhang, Anpeng
    Kang, Jee Eun
    Axhausen, Kay
    Kwon, Changhyun
    TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2018, 89 : 96 - 112
  • [7] Multi-day Intermodal Travel Planning for Urban Cities Using Ising Machines
    Bao, Siya
    Togawa, Nozomu
    2023 IEEE 26TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS, ITSC, 2023, : 54 - 60
  • [8] Identifying travel mode with GPS data
    Zong, Fang
    Yuan, Yixin
    Liu, Jianfeng
    Bai, Yu
    He, Yanan
    TRANSPORTATION PLANNING AND TECHNOLOGY, 2017, 40 (02) : 242 - 255
  • [9] INVESTIGATING COMMUTE MODE AND ROUTE CHOICE VARIABILITIES IN JAKARTA USING MULTI-DAY GPS DATA
    Arifin, Zainal N.
    Axhausen, Kay W.
    INTERNATIONAL JOURNAL OF TECHNOLOGY, 2012, 3 (01) : 45 - 55
  • [10] Evaluating the biases and sample size implications of multi-day GPS-enabled household travel surveys
    Erhardt, Gregory D.
    Rizzo, Louis
    TRANSPORT SURVEY METHODS IN THE ERA OF BIG DATA: FACING THE CHALLENGES, 2018, 32 : 279 - 290