K-STEMIT: Knowledge-Informed Spatio-Temporal Efficient Multi-Branch Graph Neural Network for Subsurface Stratigraphy Thickness Estimation from Radar Data

arXiv cs.LG / 4/14/2026

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Key Points

  • 論文は、レーダーデータから極域の地下(氷床)内部層の厚さを推定するための知識(物理)を組み込んだ新しいK-STEMITを提案している。
  • スペックルノイズや取得アーティファクトに弱い問題、さらにデータ駆動のみだと空間・時間外挿で不自然な推定になりやすい問題に対し、物理的に同期された気象モデルのデータを取り入れることで頑健化している。
  • K-STEMITは、空間学習のための幾何学的枠組み、時間ダイナミクスを捉える時間畳み込み、複数ブランチの特徴を動的に統合する適応的特徴融合を組み合わせた効率的なマルチブランチGNNとして設計されている。
  • 実験の結果、知識を入れた設定でK-STEMITはSOTAに対して常に高精度を示しつつ、効率面でもほぼ最適であることが報告されている。

Abstract

Subsurface stratigraphy contains important spatio-temporal information about accumulation, deformation, and layer formation in polar ice sheets. In particular, variations in internal ice layer thickness provide valuable constraints for snow mass balance estimation and projections of ice sheet change. Although radar sensors can capture these layered structures as depth-resolved radargrams, convolutional neural networks applied directly to radar images are often sensitive to speckle noise and acquisition artifacts. In addition, purely data-driven methods may underuse physical knowledge, leading to unrealistic thickness estimates under spatial or temporal extrapolation. To address these challenges, we develop K-STEMIT, a novel knowledge-informed, efficient, multi-branch spatio-temporal graph neural network that combines a geometric framework for spatial learning with temporal convolution to capture temporal dynamics, and incorporates physical data synchronized from the Model Atmospheric Regional physical weather model. An adaptive feature fusion strategy is employed to dynamically combine features learned from different branches. Extensive experiments have been conducted to compare K-STEMIT against current state-of-the-art methods in both knowledge-informed and non-knowledge-informed settings, as well as other existing methods. Results show that K-STEMIT consistently achieves the highest accuracy while maintaining near-optimal efficiency. Most notably, incorporating adaptive feature fusion and physical priors reduces the root mean-squared error by 21.01% with negligible additional cost compared to its conventional multi-branch variants. Additionally, our proposed K-STEMIT achieves consistently lower per-year relative MAE, enabling reliable, continuous spatiotemporal assessment of snow accumulation variability across large spatial regions.