Generating Synthetic Passenger Data Through Joint Traffic-Passenger Modeling And Simulation

2018 21ST INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC)(2018)

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摘要
Real passenger data available to city planners are usually incomplete. The goal of our work is to generate synthetic passenger data using a novel methodology that leverages joint traffic-passenger modeling and simulation on a city scale. A demonstration of such an idea in generating synthetic bus passenger data was implemented. Specifically, we 1) learned a bus passenger demand model from indirect people mobility data to generate bus passenger demand samples, and we 2) developed a bus passenger behavior model, which runs jointly with a traffic simulator (SUMO), to generate synthetic bus passenger data. We applied the proposed methodology for a case study of Porto city, Portugal. The synthetic bus passenger data presents significant similarity in terms of spatial-temporal distributions to the real-world bus passenger data collected by the bus automated fare collection (AFC) system in Porto.
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关键词
public transportation, simulation, synthetic data, behavior modeling, Poisson process, KL divergence
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