Recovering Thermodynamics from Spectral Profiles observed by IRIS : A Machine and Deep Learning Approach

Sainz Dalda, Alberto and Rodríguez, Jaime de la Cruz and De Pontieu, Bart and Gošić, Milan (2019) Recovering Thermodynamics from Spectral Profiles observed by IRIS : A Machine and Deep Learning Approach. The Astrophysical Journal, 875 (2). L18. ISSN 2041-8213

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Abstract

Inversion codes allow the reconstruction of a model atmosphere from observations. With the inclusion of optically thick lines that form in the solar chromosphere, such modeling is computationally very expensive because a non-LTE evaluation of the radiation field is required. In this study, we combine the results provided by these traditional methods with machine and deep learning techniques to obtain similar-quality results in an easy-to-use, much faster way. We have applied these new methods to Mg ii h and k lines observed by the Interface Region Imaging Spectrograph (IRIS). As a result, we are able to reconstruct the thermodynamic state (temperature, line-of-sight velocity, nonthermal velocities, electron density, etc.) in the chromosphere and upper photosphere of an area equivalent to an active region in a few CPU minutes, speeding up the process by a factor of 105 − 106. The open-source code accompanying this Letter will allow the community to use IRIS observations to open a new window to a host of solar phenomena.

Item Type: Article
Subjects: Middle East Library > Physics and Astronomy
Depositing User: Unnamed user with email support@middle-eastlibrary.com
Date Deposited: 03 Jun 2023 07:28
Last Modified: 05 Sep 2024 11:33
URI: http://editor.openaccessbook.com/id/eprint/994

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