Optimizing Urban Mobility Through Complex Network Analysis and Big Data from Smart Cards
Li Sun, Negin Ashrafi, Maryam Pishgar

TL;DR
This paper presents a scalable methodology for analyzing smart card data to differentiate high- and low-frequency travelers, revealing their distinct network roles and impacts on urban transit system robustness and congestion.
Contribution
It introduces a novel integration of data preprocessing, clustering, and complex network analysis to model diverse passenger behaviors in large-scale transit data.
Findings
HF networks are highly connected but less robust under disruptions.
LF networks are more resilient and dispersed.
HF travelers mainly contribute to peak-hour congestion.
Abstract
This study investigates the network characteristics of high-frequency (HF) and low-frequency (LF) travelers in urban public transport systems by analyzing 20 million smart card records from Beijing's transit network. A novel methodology integrates advanced data preprocessing, clustering techniques, and complex network analysis to differentiate HF and LF passenger behaviors and their impacts on network structure, robustness, and efficiency. The primary challenge is accurately segmenting and modeling the behaviors of diverse passenger groups within a large-scale, noisy dataset while maintaining computational efficiency and scalability. HF networks, representing the top 25% of travelers by usage frequency, exhibit high connectivity with an average clustering coefficient of 0.72 and greater node degree centrality. However, they have lower robustness, with efficiency declining by 35% under…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Traffic Prediction and Management Techniques · Transportation Planning and Optimization
