TheUse of Conditional Variational Autoencoders in Generating Stellar Spectra
Abstract
We present a conditional variational autoencoder (CVAE) that generates stellar spectra covering 4000 Teff 11,000 K, 2.0 g 5.0 dex, -1.5 [M/H] +1.5 dex, v i 300 km/s, t between 0 and 4 km/s, and for any instrumental resolving powers less than 115,000. The spectra can be calculated in the wavelength range 4450-5400 . Trained on a grid of SYNSPEC spectra, the network synthesizes a spectrum in around two orders of magnitude faster than line-by-line radiative transfer. We validate the CVAE on 104 test spectra unseen during training. Pixel-wise statistics yield a median absolute residual of <1.8×10-3 flux units with no wavelength-dependent bias. A residual error map across the parameters plane shows | F|<2×10-3 everywhere, and marginal diagnostics versus Teff, g, v i, t, and [Fe/H]\ reveal no relevant trends. These results demonstrate that the CVAE can serve as a drop-in, physics-aware surrogate for radiative transfer codes, enabling real-time forward modeling in stellar parameter inference and offering promising tools for spectra synthesis for large astrophysical data analysis.
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