An Intuitive Metric to Quantify and Communicate Tropical Cyclone Rainfall Hazard

Author:

Bosma Christopher D.1,Wright Daniel B.1,Nguyen Phu2,Kossin James P.3,Herndon Derrick C.4,Shepherd J. Marshall5

Affiliation:

1. Department of Civil and Environmental Engineering, University of Wisconsin–Madison, Madison, Wisconsin

2. Department of Civil and Environmental Engineering, University of California, Irvine, Irvine, California

3. Center for Weather and Climate, NOAA/National Centers for Environmental Information, Madison, Wisconsin

4. Cooperative Institute for Meteorological Satellite Studies, University of Wisconsin–Madison, Madison, Wisconsin

5. Program in Atmospheric Sciences, Department of Geography, University of Georgia, Athens, Georgia

Abstract

AbstractRecent tropical cyclones (TCs) have highlighted the hazards that TC rainfall poses to human life and property. These hazards are not adequately conveyed by the commonly used Saffir–Simpson scale. Additionally, while recurrence intervals (or, their inverse, annual exceedance probabilities) are sometimes used in the popular media to convey the magnitude and likelihood of extreme rainfall and floods, these concepts are often misunderstood by the public and have important statistical limitations. We introduce an alternative metric—the extreme rain multiplier (ERM), which expresses TC rainfall as a multiple of the climatologically derived 2-yr rainfall value. ERM allows individuals to connect (“anchor,” in cognitive psychology terms) the magnitude of a TC rainfall event to the magnitude of rain events that are more typically experienced in their area. A retrospective analysis of ERM values for TCs from 1948 to 2017 demonstrates the utility of the metric as a hazard quantification and communication tool. Hurricane Harvey (2017) had the highest ERM value during this period, underlining the storm’s extreme nature. ERM correctly identifies damaging historical TC rainfall events that would have been classified as “weak” using wind-based metrics. The analysis also reveals that the distribution of ERM maxima is similar throughout the eastern and southern United States, allowing for both the accurate identification of locally extreme rainfall events and the development of regional-scale (rather than local-scale) recurrence interval estimates for extreme TC rainfall. Last, an analysis of precipitation forecast data for Hurricane Florence (2018) demonstrates ERM’s ability to characterize Florence’s extreme rainfall hazard in the days preceding landfall.

Publisher

American Meteorological Society

Subject

Atmospheric Science

Reference54 articles.

1. Achenbach, J., and E.Wax-Thibodeaux, 2018: Hurricane Florence, ‘just a Cat 1,’ reveals flaw with Saffir-Simpson scale. Washington Post, 19 September, https://wapo.st/2JjQmZd.

2. The definition of the standard WMO climate normal: The key to deriving alternative climate normals;Arguez;Bull. Amer. Meteor. Soc.,2011

3. Efficient and effective? The 100-year flood in the communication and perception of flood risk;Bell;Environ. Hazards,2007

4. Hurricane Harvey (AL092017);Blake,2018

5. The deadliest, costliest, and most intense United States tropical cyclones of from 1851 to 2010 (and other frequently requested hurricane facts);Blake,2011

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