Predicting the Thermal Sunyaev-Zel'dovich Field using Modular and Equivariant Set-Based Neural Networks
Leander Thiele, Miles Cranmer, William Coulton, Shirley Ho, David N., Spergel

TL;DR
This paper introduces a novel set-based neural network architecture to accurately predict the electron pressure field responsible for the thermal Sunyaev-Zel'dovich effect from gravity-only simulations, improving predictive accuracy and interpretability.
Contribution
It presents a rotationally equivariant DeepSets neural network architecture tailored for cosmological data, enabling better modeling of baryonic fields with physical interpretability.
Findings
Achieved 70% improvement over analytic profiles.
Incorporated physical modules for interpretability.
Enhanced predictions with a conditional-VAE extension.
Abstract
Theoretical uncertainty limits our ability to extract cosmological information from baryonic fields such as the thermal Sunyaev-Zel'dovich (tSZ) effect. Being sourced by the electron pressure field, the tSZ effect depends on baryonic physics that is usually modeled by expensive hydrodynamic simulations. We train neural networks on the IllustrisTNG-300 cosmological simulation to predict the continuous electron pressure field in galaxy clusters from gravity-only simulations. Modeling clusters is challenging for neural networks as most of the gas pressure is concentrated in a handful of voxels and even the largest hydrodynamical simulations contain only a few hundred clusters that can be used for training. Instead of conventional convolutional neural net (CNN) architectures, we choose to employ a rotationally equivariant DeepSets architecture to operate directly on the set of dark matter…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Computational Physics and Python Applications · Statistical and numerical algorithms
