Assessing the Potential for Medium‐Range Ice Forecasts in the Laurentian Great Lakes

Author:

Yeo A. J.1ORCID,Anderson E. J.1ORCID,Jablonowski C.2,Wright D. M.3,Mann G. E.4,Fujisaki‐Manome A.5ORCID,Mroczka B.3,Titze D.3

Affiliation:

1. Hydrologic Science and Engineering Colorado School of Mines Golden Colorado USA

2. Climate and Space Sciences and Engineering University of Michigan Ann Arbor Michigan USA

3. Great Lakes Environmental Research Laboratory National Oceanic and Atmospheric Administration Ann Arbor Michigan USA

4. National Weather Service WFO‐Detroit National Oceanic and Atmospheric Administration White Lake Michigan USA

5. Cooperative Institute for Great Lakes Research University of Michigan Ann Arbor Michigan USA

Abstract

AbstractReal‐time forecasted ice information for large lakes, such as the Great Lakes, is critical for essential operations, such as ice breaking, commercial navigation, search and rescue, and oil spill response. Existing forecast products for large lake ice conditions are not available for medium‐range time horizons (5–16 days out), yet they could provide important information for decision making, particularly for ice breaking and spill responses. In addition, ice forecasts for Earth's largest lakes at these timescales could be important for Medium‐Range Weather (MRW) forecasting. However, the skill of existing operational products in predicting ice conditions at MRW timescales has not been studied. This work aims to determine how well ice forecasts from a coupled large lake hydrodynamic‐ice model perform for MRW forecast horizons. Simulations were carried out for the 2022 Great Lakes ice season, using 8 different 16‐day forecast periods. Forecast results were compared to observations of meteorology and ice conditions from the U.S. National Ice Center. Results show the MRW ice forecasts in the Great Lakes outperform persistence‐based forecasts. These findings could inform the development or extension of lake operational ice forecasting and the potential of coupling between atmospheric and large lake models at medium‐range forecast time scales.

Funder

National Oceanic and Atmospheric Administration

Forecast Public Art

NOAA Weather Program Office

University of Michigan

Colorado School of Mines

Publisher

American Geophysical Union (AGU)

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