Route choice estimation in rail transit systems using smart card data: Handling vehicle schedule and walking time uncertainties
Several cities around the world rely on urban rail transit systems composed of interconnected lines, serving massive numbers of passengers on a daily basis. Accessing the location of passengers is essential to ensure the efficient and safe operation and planning of these systems. However, passenger...
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oai:animorepository.dlsu.edu.ph:faculty_research-150122024-09-03T23:27:04Z Route choice estimation in rail transit systems using smart card data: Handling vehicle schedule and walking time uncertainties Tiam-Lee, Thomas James Z. Henriques, Rui Several cities around the world rely on urban rail transit systems composed of interconnected lines, serving massive numbers of passengers on a daily basis. Accessing the location of passengers is essential to ensure the efficient and safe operation and planning of these systems. However, passenger route choices between origin and destination pairs are variable, depending on the subjective perception of travel and waiting times, required transfers, convenience factors, and on-site vehicle arrivals. This work proposes a robust methodology to estimate passenger route choices based only on automated fare collection data, i.e. without privacy-invasive sensors and monitoring devices. Unlike previous approaches, our method does not require precise train timetable information or prior route choice models, and is robust to unforeseen operational events like malfunctions and delays. Train arrival times are inferred from passenger volume spikes at the exit gates, and the likelihood of eligible routes per passenger estimated based on the alignment between vehicle location and the passenger timings of entrance and exit. Applying this approach to automated fare collection data in Lisbon, we fnd that while in most cases passengers preferred the route with the least transfers, there were a signifcant number of cases where the shorter distance was preferred. Our fndings are valuable for decision support among rail operators in various aspects such as passenger trafc bottleneck resolution, train allocation and scheduling, and placement of services. 2022-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/13075 Faculty Research Work Animo Repository Route surveying Urban transportation Rail passengers—Psychology Other Engineering |
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Route surveying Urban transportation Rail passengers—Psychology Other Engineering Tiam-Lee, Thomas James Z. Henriques, Rui Route choice estimation in rail transit systems using smart card data: Handling vehicle schedule and walking time uncertainties |
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Several cities around the world rely on urban rail transit systems composed of interconnected lines, serving massive numbers of passengers on a daily basis. Accessing the location of passengers is essential to ensure the efficient and safe operation and planning of these systems. However, passenger route choices between origin and destination pairs are variable, depending on the subjective perception of travel and waiting times, required transfers, convenience factors, and on-site vehicle arrivals. This work proposes a robust methodology to estimate passenger route choices based only on automated fare collection data, i.e. without privacy-invasive sensors and monitoring devices. Unlike previous approaches, our method does not require precise train timetable information or prior route choice models, and is robust to unforeseen operational events like malfunctions and delays. Train arrival times are inferred from passenger volume spikes at the exit gates, and the likelihood of eligible routes per passenger estimated based on the alignment between vehicle location and the passenger timings of entrance and exit. Applying this approach to automated fare collection data in Lisbon, we fnd that while in most cases passengers preferred the route with the least transfers, there were a signifcant number of cases where the shorter distance was preferred. Our fndings are valuable for decision support among rail operators in various aspects such as passenger trafc bottleneck resolution, train allocation and scheduling, and placement of services. |
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Tiam-Lee, Thomas James Z. Henriques, Rui |
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Tiam-Lee, Thomas James Z. Henriques, Rui |
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Tiam-Lee, Thomas James Z. |
title |
Route choice estimation in rail transit systems using smart card data: Handling vehicle schedule and walking time uncertainties |
title_short |
Route choice estimation in rail transit systems using smart card data: Handling vehicle schedule and walking time uncertainties |
title_full |
Route choice estimation in rail transit systems using smart card data: Handling vehicle schedule and walking time uncertainties |
title_fullStr |
Route choice estimation in rail transit systems using smart card data: Handling vehicle schedule and walking time uncertainties |
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Route choice estimation in rail transit systems using smart card data: Handling vehicle schedule and walking time uncertainties |
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route choice estimation in rail transit systems using smart card data: handling vehicle schedule and walking time uncertainties |
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Animo Repository |
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2022 |
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https://animorepository.dlsu.edu.ph/faculty_research/13075 |
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