Abstract

As the mode share of the subway in Seoul has increased, the estimation of passenger travel routes has become a crucial issue to identify the congestion sections in the subway network. This paper aims to estimate the travel train of subway passengers in Seoul. The alternative routes are generated based on the train log data. The travel route is then estimated by the empirical cumulative distribution functions (ECDFs) of access time, egress time, and transfer time. The train choice probability is estimated for alternative train combinations and the train combination with the highest probability is assigned to the subway passenger. The estimated result is validated using the transfer gate data which are recorded on private subway lines. The result showed that the accuracy of the estimated travel train is shown to be 95.6%. The choice ratios for no-transfer, one-transfer, two-transfer, three-transfer, and four-transfer trips are estimated to be 53.9%, 37.7%, 6.5%, 1.5%, and 0.4%, respectively. Regarding the practical application, the passenger kilometers by lines are estimated with the travel route estimation of the whole network. As results of the passenger kilometer calculation, the passenger kilometer of the proposed algorithm is estimated to be 88,314 million passenger kilometer. The proposed algorithm estimates the passenger kilometer about 13% higher than the shortest path algorithm. This result implies that the passengers do not always prefer the shortest path and detour about 13% for their convenience.

Highlights

  • In 2004, the municipal government of Seoul introduced the automatic fare collection (AFC) system. e AFC system makes it possible to analyze the travel behavior of transit passengers

  • With smart card data obtained from the AFC system, it has much attention to estimate the travel route of passengers on subway networks [1]

  • Smart card data of the AFC system provide travel route information of bus trips and transfer trips between the bus and subway networks [3, 4]. e travel routes of the subway passengers, are still hard to identify since the smart card data do not provide route information of subway passengers [5]. e card reader of the subway AFC system is installed at the gates of the station, which is outside of the platform

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Summary

Research Article

Exploring for Route Preferences of Subway Passengers Using Smart Card and Train Log Data. As the mode share of the subway in Seoul has increased, the estimation of passenger travel routes has become a crucial issue to identify the congestion sections in the subway network. Is paper aims to estimate the travel train of subway passengers in Seoul. E alternative routes are generated based on the train log data. E train choice probability is estimated for alternative train combinations and the train combination with the highest probability is assigned to the subway passenger. E estimated result is validated using the transfer gate data which are recorded on private subway lines. E result showed that the accuracy of the estimated travel train is shown to be 95.6%. E proposed algorithm estimates the passenger kilometer about 13% higher than the shortest path algorithm. As results of the passenger kilometer calculation, the passenger kilometer of the proposed algorithm is estimated to be 88,314 million passenger kilometer. e proposed algorithm estimates the passenger kilometer about 13% higher than the shortest path algorithm. is result implies that the passengers do not always prefer the shortest path and detour about 13% for their convenience

Introduction
Data information
Boarding station ID
TP FN
Estimated number of trips
Findings
Shinbundang Line
Full Text
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