Poster Session 2 · Wednesday, December 3, 2025 4:30 PM → 7:30 PM
#5317
SIFusion: A Unified Fusion Framework for Multi-granularity Arctic Sea Ice Forecasting
Abstract
Arctic sea ice performs a vital role in global climate and has paramount impacts on both polar ecosystems and coastal communities. In the last few years, multiple deep learning based pan-Arctic sea ice concentration (SIC) forecasting methods have emerged and showcased superior performance over physics-based dynamical models.
However, previous methods forecast SIC at a fixed temporal granularity, e.g., sub-seasonal or seasonal, thus only leveraging inter-granularity information and overlooking the plentiful inter-granularity correlations. SIC at various temporal granularities exhibits cumulative effects and are naturally consistent, with short-term fluctuations potentially impacting long-term trends and long-term trends provides effective hints for facilitating short-term forecasts in Arctic sea ice.
Therefore, in this study, we propose to cultivate temporal multi-granularity that naturally derived from Arctic sea ice reanalysis data and provide a unified perspective for modeling SIC via our Sea Ice Fusion framework. SIFusion is delicately designed to leverage both intra-granularity and inter-granularity information for capturing granularity-consistent representations that promote forecasting skills.
Our extensive experiments show that SIFusion outperforms off-the-shelf deep learning models for their specific temporal granularity.