Recommendations for Developing Useful and Usable Convection-Allowing Model Ensemble Information for NWS Forecasters

Julie L. Demuth National Center for Atmospheric Research, Boulder, Colorado

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Rebecca E. Morss National Center for Atmospheric Research, Boulder, Colorado

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Isidora Jankov Cooperative Institute for Research in the Atmosphere, Colorado State University, Fort Collins, and NOAA/ESRL/Global Systems Laboratory, Boulder, Colorado

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Trevor I. Alcott NOAA/ESRL/Global Systems Laboratory, Boulder, Colorado

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Curtis R. Alexander NOAA/ESRL/Global Systems Laboratory, Boulder, Colorado

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Daniel Nietfeld NOAA/ESRL/Global Systems Laboratory, Boulder, Colorado

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Tara L. Jensen National Center for Atmospheric Research, Boulder, Colorado

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David R. Novak NOAA/NWS/WPC, College Park, Maryland

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Stanley G. Benjamin NOAA/ESRL/Global Systems Laboratory, Boulder, Colorado

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Abstract

U.S. National Weather Service (NWS) forecasters assess and communicate hazardous weather risks, including the likelihood of a threat and its impacts. Convection-allowing model (CAM) ensembles offer potential to aid forecasting by depicting atmospheric outcomes, including associated uncertainties, at the refined space and time scales at which hazardous weather often occurs. Little is known, however, about what CAM ensemble information is needed to inform forecasting decisions. To address this knowledge gap, participant observations and semistructured interviews were conducted with NWS forecasters from national centers and local weather forecast offices. Data were collected about forecasters’ roles and their forecasting processes, uses of model guidance and verification information, interpretations of prototype CAM ensemble products, and needs for information from CAM ensembles. Results revealed forecasters’ needs for specific types of CAM ensemble guidance, including a product that combines deterministic and probabilistic output from the ensemble as well as a product that provides map-based guidance about timing of hazardous weather threats. Forecasters also expressed a general need for guidance to help them provide impact-based decision support services. Finally, forecasters conveyed needs for objective model verification information to augment their subjective assessments and for training about using CAM ensemble guidance for operational forecasting. The research was conducted as part of an interdisciplinary research effort that integrated elicitation of forecasters’ CAM ensemble needs with model development efforts, with the aim of illustrating a robust approach for creating information for forecasters that is truly useful and usable.

© 2020 American Meteorological Society. For information regarding reuse of this content and general copyright information, consult the AMS Copyright Policy (www.ametsoc.org/PUBSReuseLicenses).

Publisher’s Note: This article was revised on 29 June 2020 to include an additional affiliation for co-author Jankov that was missing when originally published.

Corresponding author: Julie L. Demuth, jdemuth@ucar.edu

Abstract

U.S. National Weather Service (NWS) forecasters assess and communicate hazardous weather risks, including the likelihood of a threat and its impacts. Convection-allowing model (CAM) ensembles offer potential to aid forecasting by depicting atmospheric outcomes, including associated uncertainties, at the refined space and time scales at which hazardous weather often occurs. Little is known, however, about what CAM ensemble information is needed to inform forecasting decisions. To address this knowledge gap, participant observations and semistructured interviews were conducted with NWS forecasters from national centers and local weather forecast offices. Data were collected about forecasters’ roles and their forecasting processes, uses of model guidance and verification information, interpretations of prototype CAM ensemble products, and needs for information from CAM ensembles. Results revealed forecasters’ needs for specific types of CAM ensemble guidance, including a product that combines deterministic and probabilistic output from the ensemble as well as a product that provides map-based guidance about timing of hazardous weather threats. Forecasters also expressed a general need for guidance to help them provide impact-based decision support services. Finally, forecasters conveyed needs for objective model verification information to augment their subjective assessments and for training about using CAM ensemble guidance for operational forecasting. The research was conducted as part of an interdisciplinary research effort that integrated elicitation of forecasters’ CAM ensemble needs with model development efforts, with the aim of illustrating a robust approach for creating information for forecasters that is truly useful and usable.

© 2020 American Meteorological Society. For information regarding reuse of this content and general copyright information, consult the AMS Copyright Policy (www.ametsoc.org/PUBSReuseLicenses).

Publisher’s Note: This article was revised on 29 June 2020 to include an additional affiliation for co-author Jankov that was missing when originally published.

Corresponding author: Julie L. Demuth, jdemuth@ucar.edu
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