MacBride Conor D, Jess David B, Grant Samuel D T, Khomenko Elena, Keys Peter H, Stangalini Marco
Astrophysics Research Centre, School of Mathematics and Physics, Queen's University Belfast, Belfast BT7 1NN, UK.
Department of Physics and Astronomy, California State University Northridge, Northridge, CA 91330, USA.
Philos Trans A Math Phys Eng Sci. 2021 Feb 8;379(2190):20200171. doi: 10.1098/rsta.2020.0171. Epub 2020 Dec 21.
Determining accurate plasma Doppler (line-of-sight) velocities from spectroscopic measurements is a challenging endeavour, especially when weak chromospheric absorption lines are often rapidly evolving and, hence, contain multiple spectral components in their constituent line profiles. Here, we present a novel method that employs machine learning techniques to identify the underlying components present within observed spectral lines, before subsequently constraining the constituent profiles through single or multiple Voigt fits. Our method allows active and quiescent components present in spectra to be identified and isolated for subsequent study. Lastly, we employ a Ca ɪɪ 8542 Å spectral imaging dataset as a proof-of-concept study to benchmark the suitability of our code for extracting two-component atmospheric profiles that are commonly present in sunspot chromospheres. Minimization tests are employed to validate the reliability of the results, achieving median reduced -values equal to 1.03 between the observed and synthesized umbral line profiles. This article is part of the Theo Murphy meeting issue 'High-resolution wave dynamics in the lower solar atmosphere'.
从光谱测量中确定准确的等离子体多普勒(视线)速度是一项具有挑战性的工作,特别是当弱色球吸收线通常快速演化,因此其组成谱线轮廓中包含多个光谱成分时。在此,我们提出一种新颖的方法,该方法利用机器学习技术识别观测谱线中存在的潜在成分,随后通过单次或多次沃伊特拟合来约束其组成轮廓。我们的方法能够识别并分离光谱中存在的活跃和静态成分,以供后续研究。最后,我们采用Ca ɪɪ 8542 Å光谱成像数据集作为概念验证研究,以评估我们的代码提取黑子色球中常见的双成分大气轮廓的适用性。采用最小化测试来验证结果的可靠性,在观测到的和合成的本影谱线轮廓之间,实现的中值约化χ²值等于1.03。本文是西奥·墨菲会议议题“太阳低层大气中的高分辨率波动动力学”的一部分。