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Taxi Driver Speeding: Who, When, Where and How? A Comparative Study Between Shanghai and New York

In: Logic-Driven Traffic Big Data Analytics

Author

Listed:
  • Shaopeng Zhong

    (Dalian University of Technology
    Southwest Jiaotong University)

  • Daniel (Jian) Sun

    (Chang’an University
    Shanghai Jiao Tong University)

Abstract

This study proposes a Driver-Road-Environment Identification (DREI) method to investigate the determinant factors of taxi speeding violations. Driving style characteristics, together with road and environment variables were obtained based on the GPS data and auxiliary spatio-temporal data in Shanghai and New York City (NYC). The daily working hours of taxi drivers in Shanghai (18.6 h) was far more than NYC (8.5 h). The average occupancy speed of taxi drivers in Shanghai (21.3 km/h) was similar to that of NYC (20.3 km/h). Speeders in both cities had shorter working hours and longer daily driving distance than the ordinary taxi drivers, while their daily income was similar. Speeding drivers routinely took long distance trips (>10 km) and they preferred to choose relative faster routes rather than the shortest ones. Length of segments (1.0–1.5 km) and good traffic condition were associated with high amount of speeding rate while CBD area and secondary road were associated with low amount of speeding rate. Moreover, many speeding violations were identified occurring between 4:00 AM and 7:00 AM in both Shanghai and NYC and the worst period was between 5:00 AM and 6:00 AM in both cities. Findings of this study may assist to stipulate relevant laws and regulations such as stronger early morning, long segments supervision, shift-rule regulation and working hour restriction to mitigate the risk of potential crashes.

Suggested Citation

  • Shaopeng Zhong & Daniel (Jian) Sun, 2022. "Taxi Driver Speeding: Who, When, Where and How? A Comparative Study Between Shanghai and New York," Springer Books, in: Logic-Driven Traffic Big Data Analytics, chapter 0, pages 167-182, Springer.
  • Handle: RePEc:spr:sprchp:978-981-16-8016-8_8
    DOI: 10.1007/978-981-16-8016-8_8
    as

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