Abstract

SUMMARY Constraining initial conditions and parameters of mantle convection for a planet often requires running several hundred computationally expensive simulations in order to find those matching certain ‘observables’, such as crustal thickness, duration of volcanism, or radial contraction. A lower fidelity alternative is to use 1-D evolution models based on scaling laws that parametrize convective heat transfer. However, this approach is often limited in the amount of physics that scaling laws can accurately represent (e.g. temperature and pressure-dependent rheologies or mineralogical phase transitions can only be marginally simulated). We leverage neural networks to build a surrogate model that can predict the entire evolution (0–4.5 Gyr) of the 1-D temperature profile of a Mars-like planet for a wide range of values of five different parameters: reference viscosity, activation energy and activation volume of diffusion creep, enrichment factor of heat-producing elements in the crust and initial temperature of the mantle. The neural network we evaluate and present here has been trained from a subset of ∼10 000 evolution simulations of Mars ran on a 2-D quarter-cylindrical grid, from which we extracted laterally averaged 1-D temperature profiles. The temperature profiles predicted by this trained network match those of an unseen batch of 2-D simulations with an average accuracy of $99.7\, {\rm per~cent}$.

Highlights

  • The evolution of terrestrial planets is governed by subsolidus mantle convection (e.g. Breuer & Moore 2015)

  • We present the setup of the numerical simulations used to generate a data set of thermal evolutions of Mars calculated with our finite-volume code GAIA (Huttig et al 2013)

  • In order to accelerate the training of Neural networks (NNs), we reduced the size of the 1D temperature profiles of 200 points by two-thirds, while still capturing the shape of the temperature profiles

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Summary

Introduction

The evolution of terrestrial planets is governed by subsolidus mantle convection (e.g. Breuer & Moore 2015). Certain outputs of the simulations can be related to ‘observables’ that can be inferred through planetary space missions using camera data, remote-sensing, or in situ measurements (e.g. radial contraction, surface heat flux, surface magnetization, duration and timing of volcanism, crustal thickness and elastic lithosphere thickness). These observables can be used as constraints to infer key model parameters and initial conditions, with the goal of learning about the basic physics and evolution of planets These observables can be used as constraints to infer key model parameters and initial conditions, with the goal of learning about the basic physics and evolution of planets (e.g. Tosi & Padovan 2020)

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