Application of Deep Learning in Analysis of Stellar Spectra
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Date
2025-06
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I
Abstract
In recent years, the analysis of high-resolution stellar spectra has become increasingly
important for estimating key stellar parameters such as effective temperature
(Teff ), surface gravity (log g), metallicity ([M/H]), and rotational velocity (v sin i).
Traditional methods often rely on manual calibration or spectrum synthesis, which
can be time-consuming and error-prone, especially for M dwarfs whose spectra are
dense with molecular features. In this study, we investigate the use of convolutional
neural networks (CNNs) to automate the estimation of stellar parameters using
synthetic and observed data.We adopt a StarNet-like CNN architecture trained on
synthetic spectra generated from the PHOENIX-ACES model grid, and evaluate its
performance on real observations from the CARMENES survey. Separate models are
developed for each parameter, allowing for dedicated tuning and improved prediction
accuracy. The training process includes flux normalization and data augmentation
across multiple spectral windows. To assess performance, we compare predicted
parameters with literature values and find strong agreement, especially for Teff and
log g, with significantly reduced mean squared error.This approach demonstrates the
effectiveness of deep learning in spectroscopic analysis, offering a scalable solution for
stellar parameter estimation. The results reinforce the potential of CNNs to support
large-scale stellar surveys and contribute to more accurate stellar characterization.
Description
Dissertation under the supervision of Dr. Sarbani Palit
Keywords
Stellar spectra, CARMENES, PHOENIX-ACES, Convolutional neural network (CNN), Deep learning, Stellar parameter estimation, StarNet, Teff, log g, [M/H], v sin i
Citation
35p.
