Physics-Conditioned Synthesis of Internal Ice-Layer Thickness for Incomplete Layer Traces

2026-04-22Machine Learning

Machine Learning
AI summary

The authors study how to fill in missing parts of ice layers seen in radar images, which often have gaps or missing sections due to noise and limited detail. They developed a method that uses information from climate models and combines spatial and time-based learning to make the ice layer data more complete and physically accurate. Their approach learns only from the visible data without guessing missing parts incorrectly, improving the quality of layer reconstructions. This completed data can then help train other models to better predict deep ice layers.

ice stratigraphyradar imagingsnow accumulationgraph-based modelsgeometric learningtransformer networksmask-aware regressionclimate modelslayer thicknessdeep-layer prediction
Authors
Zesheng Liu, Maryam Rahnemoonfar
Abstract
Internal ice layers imaged by radar provide key evidence of snow accumulation and ice dynamics, but radar-derived layer boundary observations are often incomplete, with discontinuous traces and sometimes entirely missing layers, due to limited resolution, sensor noise, and signal loss. Existing graph-based models for ice stratigraphy generally assume sufficiently complete layer profiles and focus on predicting deeper-layer thickness from reliably traced shallow layers. In this work, we address the layer-completion problem itself by synthesizing complete ice-layer thickness annotations from incomplete radar-derived layer traces by conditioning on colocated physical features synchronized from physical climate models. The proposed network combines geometric learning to aggregate within-layer spatial context with a transformer-based temporal module that propagates information across layers to encourage coherent stratigraphy and consistent thickness evolution. To learn from incomplete supervision, we optimize a mask-aware robust regression objective that evaluates errors only at observed thickness values and normalizes by the number of valid entries, enabling stable training under varying sparsity without imputation and steering completions toward physically plausible values. The model preserves observed thickness where available and infers only missing regions, recovering fragmented segments and even fully absent layers while remaining consistent with measured traces. As an additional benefit, the synthesized thickness stacks provide effective pretraining supervision for a downstream deep-layer predictor, improving fine-tuned accuracy over training from scratch on the same fully traced data.