Accelerating the discovery of steady-states of planetary interior dynamics with machine learning
Siddhant Agarwal, Nicola Tosi, Christian H\"uttig, David S. Greenberg,, Ali Can Bekar

TL;DR
This paper introduces a machine learning approach to significantly accelerate mantle convection simulations by predicting steady-state temperature profiles, reducing computational time and enabling more efficient planetary interior studies.
Contribution
The authors develop a neural network trained on a small dataset to accurately predict steady-state temperature profiles, improving simulation efficiency without prediction errors.
Findings
Median reduction of 3.75 in time steps to reach steady-state
Neural network requires minimal training data
Minimal computational overhead at inference time
Abstract
Simulating mantle convection often requires reaching a computationally expensive steady-state, crucial for deriving scaling laws for thermal and dynamical flow properties and benchmarking numerical solutions. The strong temperature dependence of the rheology of mantle rocks causes viscosity variations of several orders of magnitude, leading to a slow-evolving stagnant lid where heat conduction dominates, overlying a rapidly-evolving and strongly convecting region. Time-stepping methods, while effective for fluids with constant viscosity, are hindered by the Courant criterion, which restricts the time step based on the system's maximum velocity and grid size. Consequently, achieving steady-state requires a large number of time steps due to the disparate time scales governing the stagnant and convecting regions. We present a concept for accelerating mantle convection simulations using…
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Taxonomy
TopicsScientific Research and Discoveries · Astro and Planetary Science · Stellar, planetary, and galactic studies
