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Seasonal Forecasting of Pan-Arctic Sea Ice with State Space Model

About

The rapid decline of Arctic sea ice resulting from anthropogenic climate change poses significant risks to indigenous communities, ecosystems, and the global climate system. This situation emphasizes the immediate necessity for precise seasonal sea ice forecasts. While dynamical models perform well for short-term forecasts, they encounter limitations in long-term forecasts and are computationally intensive. Deep learning models, while more computationally efficient, often have difficulty managing seasonal variations and uncertainties when dealing with complex sea ice dynamics. In this research, we introduce IceMamba, a deep learning architecture that integrates sophisticated attention mechanisms within the state space model. Through comparative analysis of 25 renowned forecast models, including dynamical, statistical, and deep learning approaches, our experimental results indicate that IceMamba delivers excellent seasonal forecasting capabilities for Pan-Arctic sea ice concentration. Specifically, IceMamba outperforms all tested models regarding average RMSE and anomaly correlation coefficient (ACC) and ranks second in Integrated Ice Edge Error (IIEE). This innovative approach enhances our ability to foresee and alleviate the effects of sea ice variability, offering essential insights for strategies aimed at climate adaptation.

Wei Wang, Weidong Yang, Lei Wang, Guihua Wang, Ruibo Lei• 2025

Related benchmarks

TaskDatasetResultRank
Sea Ice Concentration PredictionOSI-450-A1 2016
RMSE (%)7.135
10
Sea Ice Concentration PredictionOSI-450-A1 2017
RMSE (%)6.676
10
Sea Ice Concentration PredictionOSI-450-A1 2018
RMSE6.85
10
Sea Ice Concentration PredictionOSI-450-A1 2019
RMSE6.735
10
Sea Ice Concentration PredictionOSI-450-A1 2020
RMSE0.0688
10
Sea Ice Concentration PredictionAMSR2 (test)
MAE2.69
10
Sea Ice Concentration PredictionArctic Sea Ice Concentration (SIC)
Params (M)44.15
10
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