Inferring ice sheet damage models from limited observations using CRIKit: the Constitutive Relation Inference Toolkit
Grant Bruer, Tobin Isaac

TL;DR
This paper explores inferring damage models of ice sheets from limited observational data using a neural network-based approach within CRIKit, aiming to improve model transferability and understanding of damage evolution.
Contribution
It introduces a neural network framework for learning ice sheet damage models from synthetic data, addressing challenges of observational limitations and damage advection.
Findings
Neural network models can approximate damage evolution but face optimization challenges.
Including surface and borehole data improves model inference.
Basic neural networks exhibit deficiencies that can be mitigated with inductive biases.
Abstract
We examine the prospect of learning ice sheet damage models from observational data. Our approach, implemented in CRIKit (the Constitutive Relation Inference Toolkit), is to model the material time derivative of damage as a frame-invariant neural network, and to optimize the parameters of the model from simulations of the flow of an ice dome. Using the model of Albrecht and Levermann as the ground truth to generate synthetic observations, we measure the difference of optimized neural network models from that model to try to understand how well this process generates models that can then transfer to other ice sheet simulations. The use of so-called "deep-learning" models for constitutive equations, equations of state, sub-grid-scale processes, and other pointwise relations that appear in systems of PDEs has been successful in other disciplines, yet our inference setting has some…
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Taxonomy
TopicsCryospheric studies and observations · Landslides and related hazards · Winter Sports Injuries and Performance
