SOCIAL SCIENCE DATASETS, RESEARCH INSTRUMENTS, AND DATA ETHICS The Extreme Weather and Emergency Management Survey

Anna Wanless, Sam Stormer,Joseph T. Ripberger,Makenzie J. Krocak,Andrew Fox, David Hogg,Hank Jenkins-Smith,Carol Silva, Scott E. Robinson, Warren S. Ellerf

WEATHER CLIMATE AND SOCIETY(2023)

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摘要
National Weather Service (NWS) forecasters have many roles and responsibilities, including communica-tion with core partners throughout the forecast and warning process to ensure that the information they are providing is relevant, understandable, and actionable. Although the NWS communicates to many groups, members of the emergency management community are among the most critical partners. However, little is known about the diverse population of emergency managers (EMs) and how they receive, process, and use forecast information. The Extreme Weather and Emergency Management Survey (WxEM) aims to fill this knowledge gap by 1) building a nationwide panel of EMs and 2) fielding routine surveys that include questions of relevance to NWS operations. The panel was built by creating a data-base with contact information from more than 4000 EMs across the country. An enrollment survey was sent to the list, and over 700 EMs agreed to participate in the project. Following enrollment, WxEM panelists receive surveys three-four times per year that address how EMs use NWS forecast information. These surveys cover a variety of subjects, with the goal of working with other researchers to develop surveys that address their research needs. By collaborating with other research groups to design short, focused surveys, the WxEM project will reduce the research burden on EMs and, at the same time, increase the quality and comparability of research data in the weather enterprise. The results will be shared with the NWS and the research community, and all data gathered from these surveys will be publicly available.
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关键词
Social science,Communications/decision-making,Decision support,Emergency preparedness,Emergency response
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