Deep learning for surrogate modelling of 2D mantle convection
Siddhant Agarwal, Nicola Tosi, Pan Kessel, Doris Breuer, Gr\'egoire, Montavon

TL;DR
This paper demonstrates that deep learning models, including FNNs and LSTMs, can accurately surrogate complex 2D mantle convection simulations, capturing detailed temperature fields and flow dynamics efficiently.
Contribution
It extends previous work by predicting full 2D temperature fields using deep learning, surpassing traditional 1D models and providing detailed convection structure predictions.
Findings
FNN and LSTM predict temperature fields with over 99% accuracy.
Deep autoencoders compress temperature data by a factor of 142.
LSTMs better capture flow dynamics than FNNs.
Abstract
Traditionally, 1D models based on scaling laws have been used to parameterized convective heat transfer rocks in the interior of terrestrial planets like Earth, Mars, Mercury and Venus to tackle the computational bottleneck of high-fidelity forward runs in 2D or 3D. However, these are limited in the amount of physics they can model (e.g. depth dependent material properties) and predict only mean quantities such as the mean mantle temperature. We recently showed that feedforward neural networks (FNN) trained using a large number of 2D simulations can overcome this limitation and reliably predict the evolution of entire 1D laterally-averaged temperature profile in time for complex models. We now extend that approach to predict the full 2D temperature field, which contains more information in the form of convection structures such as hot plumes and cold downwellings. Using a dataset of…
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Taxonomy
TopicsHydrocarbon exploration and reservoir analysis · Reservoir Engineering and Simulation Methods · Geomagnetism and Paleomagnetism Studies
MethodsTanh Activation · Sigmoid Activation · Long Short-Term Memory
