Constructing Spatiotemporal Load Profiles of Transit Vehicles with Multiple Data Sources

Journal Article (2018)
Author(s)

Ding Luo (TU Delft - Transport and Planning)

Loïc Bonnetain (TU Delft - Transport and Planning, Université de Lyon)

Oded Cats (TU Delft - Transport and Planning)

Hans van Lint (TU Delft - Transport and Planning)

Transport and Planning
DOI related publication
https://doi.org/10.1177/0361198118781166
More Info
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Publication Year
2018
Language
English
Related content
Transport and Planning
Issue number
8
Volume number
2672
Pages (from-to)
175–186
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Abstract

Obtaining load profiles of transit vehicles has remained as a difficult task for transit operators because of technical and financial constraints. Although a significant advance in transit demand and supply data collection has been achieved over the past decade, information related to load profiles at the vehicular level is either impossible or very difficult to retrieve from them. It is not even uncommon to see that these data are underutilized by transit operators owing to considerable deficiencies and shortcomings in the data themselves, and/or the processing algorithms needed to process them. This study is therefore dedicated to addressing this challenge that has largely been overlooked by both researchers and practitioners. First, the issues which hinder the construction of load profiles based on three prevailing transit data sources are identified, including automatic fare collection (AFC), automatic vehicle location (AVL), and general transit feed specification (GTFS) data. Second, a methodology is developed for sequentially addressing all the issues and generating desirable vehicle load profiles. The methodology consists of four steps, including (1) data pre-processing, (2) matching trips in GTFS and AVL, (3) matching passenger rides to vehicle trajectories, and (4) improving vehicle trajectories. The resulting spatiotemporal load profiles of transit vehicles enable detailed investigation into vehicle movements and demand patterns over time and space, including service utilization and the propagation of delays and crowding. Data collected from the urban transit network in The Hague, The Netherlands are used to demonstrate the proposed methodology. The visualization of spatiotemporal load profiles through space-time seat occupancy graphs provides operators with a compact and powerful reference for the improvement of their services.