TY - JOUR
T1 - Innovations in Winter Storm Forecasting and Decision Support Services
AU - Novak, David R.
AU - Perfater, Sarah E.
AU - Demuth, Julie L.
AU - Bieda, Stephen W.
AU - Carbin, Gregory
AU - Craven, Jeffrey
AU - Erickson, Michael J.
AU - Jeglum, Matthew E.
AU - Kastman, Joshua
AU - Nelson, James A.
AU - Rudack, David E.
AU - Staudenmaier, Michael J.
AU - Waldstreicher, Jeff S.
N1 - Publisher Copyright:
©2023 American Meteorological Society.
PY - 2023/3
Y1 - 2023/3
N2 - Winter storms are disruptive to society and the economy, and they often cause significant injuries and deaths. Innovations in winter storm forecasting have occurred across the value chain over the past two decades, from physical understanding, to observations, to model forecasts, to postprocessing, to forecaster knowledge and interpretation, to products and services, and ultimately to decision support. These innovations enable more accurate and consistent forecasts, which are increasingly being translated into actionable information for decision-makers. This paper reviews the current state of winter storm forecasting in the context of the U.S. National Weather Service operations and describes a potential future state. Given predictability limitations, a key challenge of winter storm forecasting has been characterizing uncertainty and communicating the forecast in ways that are understandable and useful to decision-makers. To address this challenge, particular focus is placed on establishing a probabilistic framework, with probabilistic hazard information serving as a foundation for winter storm decision support services. The framework is guided by social science research to ensure effective communication of risk to meet users' needs. Solutions to gaps impeding progress in winter storm forecasting are highlighted, including better understanding of mesoscale phenomenon, the need for better ensemble calibration, a rigorous and consistent database of observed impacts, and linking multiparameter probabilities (e.g., probability of intense snowfall rates at rush hour) with users' information needs and decisions.
AB - Winter storms are disruptive to society and the economy, and they often cause significant injuries and deaths. Innovations in winter storm forecasting have occurred across the value chain over the past two decades, from physical understanding, to observations, to model forecasts, to postprocessing, to forecaster knowledge and interpretation, to products and services, and ultimately to decision support. These innovations enable more accurate and consistent forecasts, which are increasingly being translated into actionable information for decision-makers. This paper reviews the current state of winter storm forecasting in the context of the U.S. National Weather Service operations and describes a potential future state. Given predictability limitations, a key challenge of winter storm forecasting has been characterizing uncertainty and communicating the forecast in ways that are understandable and useful to decision-makers. To address this challenge, particular focus is placed on establishing a probabilistic framework, with probabilistic hazard information serving as a foundation for winter storm decision support services. The framework is guided by social science research to ensure effective communication of risk to meet users' needs. Solutions to gaps impeding progress in winter storm forecasting are highlighted, including better understanding of mesoscale phenomenon, the need for better ensemble calibration, a rigorous and consistent database of observed impacts, and linking multiparameter probabilities (e.g., probability of intense snowfall rates at rush hour) with users' information needs and decisions.
KW - Communications/decision making
KW - Decision support
KW - Ensembles
KW - Operational forecasting
KW - Probabilistic Quantitative Precipitation Forecasting (PQPF)
KW - Winter/cool season
UR - https://www.scopus.com/pages/publications/85158870870
U2 - 10.1175/BAMS-D-22-0065.1
DO - 10.1175/BAMS-D-22-0065.1
M3 - Article
AN - SCOPUS:85158870870
SN - 0003-0007
VL - 104
SP - E715-E735
JO - Bulletin of the American Meteorological Society
JF - Bulletin of the American Meteorological Society
IS - 3
ER -