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An Assessment of Subseasonal Prediction Skill of the Antarctic Sea Ice Edge. | LitMetric

AI Article Synopsis

  • This study evaluated the prediction skill of Antarctic sea ice edge forecasts using a metric called spatial probability score (SPS) from the Copernicus Climate Change Service and Subseasonal to Seasonal projects.
  • It found that sea ice predictions can remain accurate for up to 38 days, with better predictions in the West Antarctic than the East, and noted that seasonal prediction skill varies based on the specific dynamical system used.
  • Key factors affecting prediction skill include the model initialization and physics, and creating a multi-model forecast showed improved accuracy compared to using individual models.

Article Abstract

In this study, the subseasonal Antarctic sea ice edge prediction skill of the Copernicus Climate Change Service (C3S) and Subseasonal to Seasonal (S2S) projects was evaluated by a probabilistic metric, the spatial probability score (SPS). Both projects provide subseasonal to seasonal scale forecasts of multiple coupled dynamical systems. We found that predictions by individual dynamical systems remain skillful for up to 38 days (i.e., the ECMWF system). Regionally, dynamical systems are better at predicting the sea ice edge in the West Antarctic than in the East Antarctic. However, the seasonal variations of the prediction skill are partly system-dependent as some systems have a freezing-season bias, some had a melting-season bias, and some had a season-independent bias. Further analysis reveals that the model initialization is the crucial prerequisite for skillful subseasonal sea ice prediction. For those systems with the most realistic initialization, the model physics dictates the propagation of initialization errors and, consequently, the temporal length of predictive skill. Additionally, we found that the SPS-characterized prediction skill could be improved by increasing the ensemble size to gain a more realistic ensemble spread. Based on the C3S systems, we constructed a multi-model forecast from the above principles. This forecast consistently demonstrated a superior prediction skill compared to individual dynamical systems or statistical observation-based benchmarks. In summary, our results elucidate the most important factors (i.e., the model initialization and the model physics) affecting the currently available subseasonal Antarctic sea ice prediction systems and highlighting the opportunities to improve them significantly.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11583286PMC
http://dx.doi.org/10.1029/2024JC021499DOI Listing

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