Acceleration of horizontal numerical advection for atmospheric modeling through surrogate modeling with temporal coarse-graining
Manho Park, Christopher V. Rackauckas, Christopher W. Tessum

TL;DR
This paper presents a machine-learned surrogate model for atmospheric advection that significantly accelerates simulations by using temporal coarse-graining, maintaining high spatial resolution and generalizing across seasons and heights.
Contribution
The authors develop a neural network-based solver that achieves high-speed advection simulation with minimal loss of spatial resolution through temporal coarse-graining, outperforming previous approaches.
Findings
Achieves up to 92× speedup with acceptable accuracy loss
Successfully generalizes across seasons and vertical levels
Maintains high spatial resolution despite larger time steps
Abstract
Machine-learned surrogate modeling of advection may accelerate geoscientific models, but existing approaches have either achieved limited speedup or have sacrificed spatial resolution compared to the model they are trained to emulate. We developed a machine-learned solver that speeds up advection simulations without sacrificing spatial resolution through the use of temporal coarse-graining, where the model is trained to take larger integration steps than dictated by the Courant-Friedrich-Lewy (CFL) condition. Our solver framework includes a convolutional neural network that takes concentrations and CFL numbers as inputs and outputs mass flux. Our solvers emulate 10-day ground-level horizontal advection simulations with r values against the baseline ranging from 0.60--0.98 with temporal coarsening factors of 4 to 32 times the baseline integration time step. Speed increases and…
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