A Hybrid Deep Neural Operator/Finite Element Method for Ice-Sheet
Modeling
- URL: http://arxiv.org/abs/2301.11402v1
- Date: Thu, 26 Jan 2023 20:28:34 GMT
- Title: A Hybrid Deep Neural Operator/Finite Element Method for Ice-Sheet
Modeling
- Authors: QiZhi He, Mauro Perego, Amanda A. Howard, George Em Karniadakis, Panos
Stinis
- Abstract summary: We develop a hybrid approach to approximate existing ice sheet computational models at a fraction of their cost.
We show that the resulting hybrid model is very accurate and it is an order of magnitude faster than the traditional finite element model.
We then target the evolution of the Humboldt glacier in Greenland and show that our hybrid model can provide accurate statistics of the glacier mass loss.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: One of the most challenging and consequential problems in climate modeling is
to provide probabilistic projections of sea level rise. A large part of the
uncertainty of sea level projections is due to uncertainty in ice sheet
dynamics. At the moment, accurate quantification of the uncertainty is hindered
by the cost of ice sheet computational models. In this work, we develop a
hybrid approach to approximate existing ice sheet computational models at a
fraction of their cost. Our approach consists of replacing the finite element
model for the momentum equations for the ice velocity, the most expensive part
of an ice sheet model, with a Deep Operator Network, while retaining a classic
finite element discretization for the evolution of the ice thickness. We show
that the resulting hybrid model is very accurate and it is an order of
magnitude faster than the traditional finite element model. Further, a
distinctive feature of the proposed model compared to other neural network
approaches, is that it can handle high-dimensional parameter spaces (parameter
fields) such as the basal friction at the bed of the glacier, and can therefore
be used for generating samples for uncertainty quantification. We study the
impact of hyper-parameters, number of unknowns and correlation length of the
parameter distribution on the training and accuracy of the Deep Operator
Network on a synthetic ice sheet model. We then target the evolution of the
Humboldt glacier in Greenland and show that our hybrid model can provide
accurate statistics of the glacier mass loss and can be effectively used to
accelerate the quantification of uncertainty.
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