Retrieval of the physical parameters of galaxies from WEAVE-StePS-like data using machine learning
J. Angthopo, B.R. Granett, F. La Barbera, M. Longhetti, A. Iovino, M., Fossati, F.R. Ditrani, L. Costantin, S. Zibetti, A. Gallazzi, P., S\'anchez-Bl\'azquez, C. Tortora, C. Spiniello, B. Poggianti, A. Vazdekis, M., Balcells, S. Bardelli, C. R. Benn, M. Bianconi, M. Bolzonella

TL;DR
This study demonstrates that machine learning algorithms, specifically random forests and KNN, can accurately retrieve key physical parameters of galaxies from simulated WEAVE-StePS-like spectra across various S/N ratios and redshifts, aiding galaxy classification.
Contribution
The paper introduces the application of machine learning methods to estimate galaxy physical parameters from simulated spectra, highlighting the effectiveness of RF and KNN algorithms at different S/N levels.
Findings
Both algorithms accurately estimate ages and metallicities with low bias.
RF outperforms KNN in parameter prediction.
Machine learning enables galaxy classification into blue, green, and red populations.
Abstract
The WHT Enhanced Area Velocity Explorer (WEAVE) is a new, massively multiplexing spectrograph. This new instrument will be exploited to obtain high S/N spectra of 25000 galaxies at intermediate redshifts for the WEAVE Stellar Population Survey (WEAVE-StePS). We test machine learning methods for retrieving the key physical parameters of galaxies from WEAVE-StePS-like spectra using both photometric and spectroscopic information at various S/Ns and redshifts. We simulated 105000 galaxy spectra assuming SFH with an exponentially declining star formation rate, covering a wide range of ages, stellar metallicities, sSFRs, and dust extinctions. We then evaluated the ability of the random forest and KNN algorithms to correctly predict such parameters assuming no measurement errors. We checked how much the predictive ability deteriorates for different S/Ns and redshifts, finding that…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Astronomical Observations and Instrumentation
