Advancing climate model interpretability: Feature attribution for Arctic melt anomalies
Tolulope Ale, Nicole-Jeanne Schlegel, Vandana P. Janeja

TL;DR
This paper introduces a novel unsupervised feature attribution method to interpret Arctic melt anomalies in climate models, improving understanding of melt dynamics and model physics.
Contribution
It presents a new attribution framework using counterfactual explanations to analyze anomalies in ERA5 and GEMB models, validated against ground-truth data.
Findings
Effective identification of features driving melt anomalies
Validation against ground-truth data confirms accuracy
Enhanced interpretability of climate model anomalies
Abstract
The focus of our work is improving the interpretability of anomalies in climate models and advancing our understanding of Arctic melt dynamics. The Arctic and Antarctic ice sheets are experiencing rapid surface melting and increased freshwater runoff, contributing significantly to global sea level rise. Understanding the mechanisms driving snowmelt in these regions is crucial. ERA5, a widely used reanalysis dataset in polar climate studies, offers extensive climate variables and global data assimilation. However, its snowmelt model employs an energy imbalance approach that may oversimplify the complexity of surface melt. In contrast, the Glacier Energy and Mass Balance (GEMB) model incorporates additional physical processes, such as snow accumulation, firn densification, and meltwater percolation/refreezing, providing a more detailed representation of surface melt dynamics. In this…
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Taxonomy
TopicsGeology and Paleoclimatology Research
MethodsFocus
