Modelling simple stellar populations in the near-ultraviolet to near-infrared with the X-shooter Spectral Library (XSL)
Kristiina Verro, S. C. Trager, R. F. Peletier, A. Lan\c{c}on, A., Arentsen, Y.-P. Chen, P. R. T. Coelho, M. Dries, J. Falc\'on-Barroso, A., Gonneau, M. Lyubenova, L. Martins, P. Prugniel, P. S\'anchez-Bl\'azquez, A., Vazdekis

TL;DR
This paper introduces empirical stellar population models using the high-resolution X-shooter Spectral Library, covering a broad wavelength range from NUV to NIR, to improve understanding of stellar populations, especially the influence of evolved cool stars.
Contribution
The models extend the wavelength coverage and metallicity range of previous empirical models, incorporating detailed spectra of various giant star types for more accurate stellar population analysis.
Findings
Models reproduce optical colours of galaxy clusters accurately.
Significant differences observed in NIR colours between models and galaxies.
Expanded NIR index predictions compared to previous models.
Abstract
We present simple stellar population models based on the empirical X-shooter Spectral Library (XSL) from NUV to NIR wavelengths. The unmatched characteristics of relatively high resolution and extended wavelength coverage ( nm, ) of the XSL population models bring us closer to bridging optical and NIR studies of intermediate and old stellar populations. It is now common to find good agreement between observed and predicted NUV and optical properties of stellar clusters due to our good understanding of the main-sequence and early giant phases of stars. However, NIR spectra of intermediate-age and old stellar populations are sensitive to cool K and M giants. The asymptotic giant branch, especially the thermally pulsing asymptotic giant branch, shapes the NIR spectra of Gyr old stellar populations; the tip of the red giant branch defines the NIR spectra of…
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