array(2) { ["lab"]=> string(4) "1378" ["publication"]=> string(5) "12171" } Estimating Train Choices of Rail Transit Passengers with Real Timetable and Automatic Fare Collection Data - 朱炜 | LabXing

朱炜

简介 轨道交通网络客流分析与运营安全管理

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Estimating Train Choices of Rail Transit Passengers with Real Timetable and Automatic Fare Collection Data

2017
期刊 Journal of Advanced Transportation
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An urban rail transit (URT) system is operated according to relatively punctual schedule, which is one of the most important constraints for a URT passenger’s travel. Thus, it is the key to estimate passengers’ train choices based on which passenger route choices as well as flow distribution on the URT network can be deduced. In this paper we propose a methodology that can estimate individual passenger’s train choices with real timetable and automatic fare collection (AFC) data. First, we formulate the addressed problem using Manski’s paradigm on modelling choice. Then, an integrated framework for estimating individual passenger’s train choices is developed through a data-driven approach. The approach links each passenger trip to the most feasible train itinerary. Initial case study on Shanghai metro shows that the proposed approach works well and can be further used for deducing other important operational indicators like route choices, passenger flows on section, load factor of train, and so forth.