Assessing Impacts of Abnormal Events on Travel Patterns Leveraging Passively Collected Trajectory Data
Feilong Wang, Xiangyang Guan, Cynthia Chen

TL;DR
This paper introduces a framework that uses passively collected mobile trajectory data to assess how abnormal events like hurricanes impact travel patterns, offering a timely and cost-effective alternative to traditional survey methods.
Contribution
The paper presents a novel framework leveraging passively collected trajectory data to evaluate travel pattern impacts of abnormal events, improving timeliness and comprehensiveness.
Findings
Framework successfully assessed Hurricane Harvey's impact on travel patterns.
Trajectory data provided detailed insights into affected populations.
The method offers a reliable alternative to traditional survey-based assessments.
Abstract
Travel patterns can be impacted by abnormal events. Assessing the impacts has important implications for relief operations and improving preparedness or planning for future events. Conventionally, the assessment is done followed by data collection from post-event surveys, which are economically costly, suffering low-response rate, time-consuming and usually delayed for months (or even years) after an event, leading to inefficient and unreliable assessment and creating obstacles for relief organizations to reach people in need. Penetration of smartphones and services enabled by them continuously generate large amount of trajectory data (e.g., Call Records Data, App-based data), containing trajectories of massive users. These trajectory data are passively and timely collected and without additional cost and contain information of travel patterns of the massive number of individuals in a…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Data-Driven Disease Surveillance · Urban Transport and Accessibility
