Identification of metro-bikeshare transfer trip chains by matching docked bikeshare and metro smartcards

Journal Article (2022)
Author(s)

Xinwei Ma (Hebei University of Technology)

Shuai Zhang (Hebei University of Technology)

Yuchuan Jin (KTH Royal Institute of Technology)

Minqing Zhu (Hebei University of Technology)

Y. Yuan (TU Delft - Transport and Planning)

Transport and Planning
Copyright
© 2022 Xinwei Ma, Shuai Zhang, Yuchuan Jin, Minqing Zhu, Y. Yuan
DOI related publication
https://doi.org/10.3390/en15010203
More Info
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Publication Year
2022
Language
English
Copyright
© 2022 Xinwei Ma, Shuai Zhang, Yuchuan Jin, Minqing Zhu, Y. Yuan
Transport and Planning
Issue number
1
Volume number
15
Pages (from-to)
1-19
Reuse Rights

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Abstract

Metro-bikeshare integration, an important way of improving the efficiency of public transportation, has grown rapidly during the last decades in many countries. However, most previous analysis of metro-bikeshare transfer trips were based on limited sample size and the number of recognized metro-bikeshare trips were not sufficient. The primary objective of this study is to derive a method to recognize metro-bikeshare transfer trips. The two data sources are provided by Nanjing Metro Company and Nanjing Public Bicycle Company over the same period from 9–29 March 2016. The identifying method includes three steps: (1) Matching Card Pairs (2) Filtering Card Pairs and (3) Identifying Card Pairs. The case study indicates that the Support Vector Classification (SVC) performs best with a high prediction accuracy of 95.9% using seamless smartcards. The identifying method is then used to recognize the transfer trips from other types of cards, resulting in 17,022 valid metro-bikeshare transfer trips made by 2948 travelers. Finally, travel patterns extracted from the two groups of identified transfer trips are analyzed comparatively. The method proposed presents new opportunities for analyzing metro-bikeshare transfer trip characteristics.