A framework for deep learning emulation of numerical models with a case study in satellite remote sensing
Kate Duffy, Thomas Vandal, Weile Wang, Ramakrishna Nemani, Auroop, R. Ganguly

TL;DR
This paper explores using deep learning to create efficient surrogate models for earth system simulations, demonstrating promising accuracy and speed in a satellite remote sensing case study.
Contribution
It introduces a deep learning framework for emulating numerical earth system models, showing it can match traditional surrogates in accuracy and efficiency.
Findings
Deep learning emulation achieves acceptable accuracy.
Emulation often outperforms traditional models in speed.
Results support deep learning as a viable surrogate modeling approach.
Abstract
Numerical models based on physics represent the state-of-the-art in earth system modeling and comprise our best tools for generating insights and predictions. Despite rapid growth in computational power, the perceived need for higher model resolutions overwhelms the latest-generation computers, reducing the ability of modelers to generate simulations for understanding parameter sensitivities and characterizing variability and uncertainty. Thus, surrogate models are often developed to capture the essential attributes of the full-blown numerical models. Recent successes of machine learning methods, especially deep learning, across many disciplines offer the possibility that complex nonlinear connectionist representations may be able to capture the underlying complex structures and nonlinear processes in earth systems. A difficult test for deep learning-based emulation, which refers to…
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Taxonomy
TopicsScientific Computing and Data Management · Meteorological Phenomena and Simulations · Gaussian Processes and Bayesian Inference
MethodsTest
