SIMBAD references

2018A&A...619A..22R - Astronomy and Astrophysics, volume 619A, 22-22 (2018/11-1)

Using machine learning algorithms to measure stellar magnetic fields.

RAMIREZ VELEZ J.C., YANEZ MARQUEZ C. and CORDOVA BARBOSA J.P.

Abstract (from CDS):


Context. Regression methods based on machine learning algorithms (MLA) have become an important tool for data analysis in many different disciplines.
Aims. In this work, we use MLA in an astrophysical context; our goal is to measure the mean longitudinal magnetic field in stars (Heff) from polarized spectra of high resolution, through the inversion of the so-called multi-line profiles.
Methods. Using synthetic data, we tested the performance of our technique considering different noise levels: In an ideal scenario of noise-free multi-line profiles, the inversion results are excellent; however, the accuracy of the inversions diminish considerably when noise is taken into account. We therefore propose a data pre-process in order to reduce the noise impact, which consists of a denoising profile process combined with an iterative inversion methodology.
Results. Applying this data pre-process, we find a considerable improvement of the inversions results, allowing to estimate the errors associated to the measurements of stellar magnetic fields at different noise levels.
Conclusions. We have successfully applied our data analysis technique to two different stars, attaining for the first time the measurement of Heff from multi-line profiles beyond the condition of line autosimilarity assumed by other techniques.

Abstract Copyright: © ESO 2018

Journal keyword(s): magnetic fields - line: profiles - polarization - radiative transfer - methods: data analysis

VizieR on-line data: <Available at CDS (J/A+A/619/A22): list.dat hd9472.fit hd9472.dat hd190771.fit hd190771.dat>

Simbad objects: 2

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