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Development and Calibration of Seasonal Probabilistic Forecasts of Ice-Free Dates and Freeze-Up Dates

Arlan Dirkson Département des sciences de la Terre et de l’atmosphère, Université du Québec à Montréal, Montreal, Quebec, Canada

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Bertrand Denis Environment and Climate Change Canada, Meteorological Services of Canada, Montreal, Quebec, Canada

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Michael Sigmond Environment and Climate Change Canada, Canadian Center for Climate Modeling and Analysis, Victoria, British Columbia, Canada

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William J. Merryfield Environment and Climate Change Canada, Canadian Center for Climate Modeling and Analysis, Victoria, British Columbia, Canada

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Abstract

Dynamical forecasting systems are being used to skillfully predict deterministic ice-free and freeze-up date events in the Arctic. This paper extends such forecasts to a probabilistic framework and tests two calibration models to correct systematic biases and improve the statistical reliability of the event dates: trend-adjusted quantile mapping (TAQM) and nonhomogeneous censored Gaussian regression (NCGR). TAQM is a probability distribution mapping method that corrects the forecast for climatological biases, whereas NCGR relates the calibrated parametric forecast distribution to the raw ensemble forecast through a regression model framework. For NCGR, the observed event trend and ensemble-mean event date are used to predict the central tendency of the predictive distribution. For modeling forecast uncertainty, we find that the ensemble-mean event date, which is related to forecast lead time, performs better than the ensemble variance itself. Using a multidecadal hindcast record from the Canadian Seasonal to Interannual Prediction System (CanSIPS), TAQM and NCGR are applied to produce categorical forecasts quantifying the probabilities for early, normal, and late ice retreat and advance. While TAQM performs better than adjusting the raw forecast for mean and linear trend bias, NCGR is shown to outperform TAQM in terms of reliability, skill, and an improved tendency for forecast probabilities to be no worse than climatology. Testing various cross-validation setups, we find that NCGR remains useful when shorter hindcast records (~20 years) are available. By applying NCGR to operational forecasts, stakeholders can be more confident in using seasonal forecasts of sea ice event timing for planning purposes.

SIGNIFICANCE STATEMENT

As Earth warms, the Arctic is shifting toward a longer open water season. With maritime access consequently increasing, stakeholders are valuing trustworthy information on the timing of transitional sea ice cover provided by seasonal forecasting models. In this study we advance seasonal predictions of the timing of local ice retreat and advance by extending these predictions to include critical information on forecast uncertainty. To do this, we tailor the established “ensemble model output statistics” calibration framework to sea ice retreat and advance dates, and construct probabilistic forecasts of early, normal, and late sea ice timing. Evaluating these predictions over a historical period indicates that stakeholders can place trust in forecast probabilities of sea ice timing for planning purposes.

© 2021 American Meteorological Society. For information regarding reuse of this content and general copyright information, consult the AMS Copyright Policy (www.ametsoc.org/PUBSReuseLicenses).

Corresponding author: Arlan Dirkson, arlan.dirkson@gmail.com

Abstract

Dynamical forecasting systems are being used to skillfully predict deterministic ice-free and freeze-up date events in the Arctic. This paper extends such forecasts to a probabilistic framework and tests two calibration models to correct systematic biases and improve the statistical reliability of the event dates: trend-adjusted quantile mapping (TAQM) and nonhomogeneous censored Gaussian regression (NCGR). TAQM is a probability distribution mapping method that corrects the forecast for climatological biases, whereas NCGR relates the calibrated parametric forecast distribution to the raw ensemble forecast through a regression model framework. For NCGR, the observed event trend and ensemble-mean event date are used to predict the central tendency of the predictive distribution. For modeling forecast uncertainty, we find that the ensemble-mean event date, which is related to forecast lead time, performs better than the ensemble variance itself. Using a multidecadal hindcast record from the Canadian Seasonal to Interannual Prediction System (CanSIPS), TAQM and NCGR are applied to produce categorical forecasts quantifying the probabilities for early, normal, and late ice retreat and advance. While TAQM performs better than adjusting the raw forecast for mean and linear trend bias, NCGR is shown to outperform TAQM in terms of reliability, skill, and an improved tendency for forecast probabilities to be no worse than climatology. Testing various cross-validation setups, we find that NCGR remains useful when shorter hindcast records (~20 years) are available. By applying NCGR to operational forecasts, stakeholders can be more confident in using seasonal forecasts of sea ice event timing for planning purposes.

SIGNIFICANCE STATEMENT

As Earth warms, the Arctic is shifting toward a longer open water season. With maritime access consequently increasing, stakeholders are valuing trustworthy information on the timing of transitional sea ice cover provided by seasonal forecasting models. In this study we advance seasonal predictions of the timing of local ice retreat and advance by extending these predictions to include critical information on forecast uncertainty. To do this, we tailor the established “ensemble model output statistics” calibration framework to sea ice retreat and advance dates, and construct probabilistic forecasts of early, normal, and late sea ice timing. Evaluating these predictions over a historical period indicates that stakeholders can place trust in forecast probabilities of sea ice timing for planning purposes.

© 2021 American Meteorological Society. For information regarding reuse of this content and general copyright information, consult the AMS Copyright Policy (www.ametsoc.org/PUBSReuseLicenses).

Corresponding author: Arlan Dirkson, arlan.dirkson@gmail.com
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