Collecting longitudinal, perishable social science observations during hurricanes

A hurricane is highly dynamic, evolving over minutes, hours, and days. It can change in intensity, track, and translational speed, all of which can change the hazards from wind, tornado, storm surge, and inland flooding. A sophisticated meteorological observation network exists to observe hurricanes over time, to monitor, understand, and forecast their evolution. It is reasonable to think that people also are dynamic, evolving in response to evolving hurricane risks. Yet, very little is known about how people perceive and respond to hurricane risks over time because developing such knowledge requires collecting social science observational data repeatedly from the same set of individuals in real time during a real-world hurricane event. We describe the methodology we developed and implemented to collect such longitudinal, perishable social science observations for three hurricane events: Laura and Marco in 2020, Henri in 2021, and Ian in 2022. With these data, we examined whether, when, and how people’s amount of forecast information obtained and risk perceptions changed during each of these events. A key finding is that people were dynamic, updating their perceptions and behaviors over time as the hurricanes evolved rather than anchoring on early knowledge and assessments. Moreover, the ways people were dynamic varied based on their predicted exposure to different hurricane hazards and across the hurricane events. Based on the novel insights this research yields, we advocate scaling and expanding this methodology to collect such data for additional hurricanes and for different high-impact and extreme weather hazards.

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Related Dataset #1 : 2021 Hurricane Henri predictive and post-storm survey instruments

Related Dataset #2 : 2020 Hurricanes Laura and Marco predictive and post-storm survey instruments

Related Dataset #3 : 2022 Hurricane Ian predictive and post-storm survey instruments

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Copyright 2025 American Meteorological Society (AMS).


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Author Demuth, Julie L.
Schumacher, Andrea
Morss, Rebecca E.
Wong-Parodi, G.
Herbert, N.
Walpole, H. D.
Alland, J. J.
Publisher UCAR/NCAR - Library
Publication Date 2025-01-01T00:00:00
Digital Object Identifier (DOI) Not Assigned
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Topic Category geoscientificInformation
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Metadata Date 2025-07-10T19:55:43.055360
Metadata Record Identifier edu.ucar.opensky::articles:42880
Metadata Language eng; USA
Suggested Citation Demuth, Julie L., Schumacher, Andrea, Morss, Rebecca E., Wong-Parodi, G., Herbert, N., Walpole, H. D., Alland, J. J.. (2025). Collecting longitudinal, perishable social science observations during hurricanes. UCAR/NCAR - Library. https://n2t.net/ark:/85065/d73f4v1v. Accessed 06 August 2025.

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