Determining star formation histories and age-metallicity relations with convolutional neural networks
Enrique Galceran, Patricia S\'anchez-Bl\'azquez, Artemi Camps-Fari\~na, M\'ed\'eric Boquien, Ralf S. Klessen, Francesco Belfiore, Daniel A. Dale, Francesca Pinna, Ivan S. Gerasimov, Thomas G. Williams, Hsi-An Pan

TL;DR
This paper presents a convolutional neural network that efficiently infers detailed star formation histories and metallicity relations from combined spectroscopic and photometric data, achieving high accuracy and speed.
Contribution
The authors develop and train a CNN that jointly predicts SFHs and metallicities from spectro-photometric data, significantly reducing computational time compared to traditional methods.
Findings
Accurately recovers SFHs and metallicity relations with minimal bias.
Produces spatially coherent maps of stellar properties in real galaxy data.
Achieves 5,000 to 20,000 times faster analysis than traditional spectral fitting.
Abstract
We aim to develop a state-of-the-art tool to infer detailed star formation histories (SFHs) and age-metallicity relations from realistic observational data, while mitigating classical degeneracies and substantially reducing computational cost. In particular, we seek to exploit the complementarity of spectroscopic and photometric data to improve constraints on the spatially resolved SFH and metallicity evolution of nearby galaxies in the PHANGS collaboration. We construct and train a convolutional neural network (CNN) that combines convolutional layers, attention mechanisms, and a shared latent space to jointly predict SFHs and metallicities in 16 age bins. The network simultaneously processes integral-field spectroscopic data from PHANGS-MUSE and five-band photometric fluxes from PHANGS-HST. Training is performed on a dataset of 165\,000 synthetic spectra and photometric measurements…
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