Abstract

AbstractThe ongoing decline of sea ice in the Arctic has heightened the need for accurate sea‐ice forecasts to support environmental protection and resource development in the region and beyond. While deep learning has shown promise in seasonal sea‐ice forecasting, most of the existing models overlook the crucial influence of atmospheric factors, thereby limiting their ability to capture the intricate characteristics of the sea‐ice system and improve forecast accuracy. To address this deficiency, we propose an attention convolutional long short‐term memory ensemble network named Atsicn, which integrates atmospheric factors to enhance the precision of multi‐step seasonal sea‐ice concentration forecasts. Our findings reveal that Atsicn outperforms state‐of‐the‐art dynamic and statistical models, and demonstrates remarkable reliability in extreme years. Furthermore, the impact of atmospheric factors on sea‐ice forecasts exhibits significant seasonality, with a relatively minimal impact on forecasts from March to June, a growing impact from July to October, and a persistent yet diminishing impact from November to February. This study provides a practical approach for seasonal sea‐ice forecasts and contributes a new perspective to the understanding of the intricate interplay between sea ice and atmospheric factors.

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