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Deep-learning architecture to forecast destinations of bus passengers from entry-only smart-card data

Authors
Jung, JaeyoungSohn, Keemin
Issue Date
Aug-2017
Publisher
INST ENGINEERING TECHNOLOGY-IET
Keywords
public transport; learning (artificial intelligence); smart cards; traffic information systems; deep-learning architecture; bus passengers; entry-only smart-card data; public transportation users; collective travel information; automatic fare collection system; AFC system; land-use characteristics; supervised machine-learning model; user information; boarding locations; alighting locations; destinations forecasting
Citation
IET INTELLIGENT TRANSPORT SYSTEMS, v.11, no.6, pp 334 - 339
Pages
6
Journal Title
IET INTELLIGENT TRANSPORT SYSTEMS
Volume
11
Number
6
Start Page
334
End Page
339
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/4124
DOI
10.1049/iet-its.2016.0276
ISSN
1751-956X
1751-9578
Abstract
Although smart-card data secures collective travel information on public transportation users, the reality is that only a few cities are equipped with an automatic fare collection (AFC) system that can provide user information for both boarding and alighting locations. Many researchers have delved into forecasting the destinations of smart-card users. Such effort, however, have never been validated with actual data on a large scale. In the present study, a deep-learning model was developed to estimate the destinations of bus passengers based on both entry-only smart-card data and land-use characteristics. A supervised machine-learning model was trained using exact information on both boarding and alighting. That information was provided by the AFC system in Seoul, Korea. The model performance was superior to that of the most prevalent schemes developed thus far.
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Sohn, Kee Min
공과대학 (도시시스템공학)
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