论文标题
草率的超级行星大气表征
Characterization of exoplanetary atmospheres with SLOPpy
论文作者
论文摘要
传输光谱是推断出在过境行星上层大气中存在的主要不透明度来源并限制热层和未结合外层的组成的最富有成果的技术之一。没有能够自动提取高分辨率传输频谱的公共工具会为科学结果带来可重复性的问题。结果,很难比较不同研究组获得的结果,并对超球星大气的均匀表征进行比较。在这项工作中,我们提出了一种标准的,公开的,用户友好的工具,名为Sloppy(带有Python的行星光谱线),以尽可能准确地提取和分析系外行星的光传输光谱。首先通过草率执行几个数据缩减步骤,以纠正空中发射,大气分散,渗漏特征和星际线的存在,中心到中线变化以及rossiter-mclaughlin效应的输入光谱,从而使其成为最先进的工具。该管道已成功地应用于大气表征理想目标的竖琴和竖琴-N数据。首先评估该代码的性能并验证其适用性,在这里我们进行了比较与从HD 189733 B,WASP-76 B,WASP-76 B,WASP-127 B和KELT-20 b的其他作品分析获得的结果进行了比较。将我们的结果与分析相同数据集的其他作品进行比较,我们得出结论,该工具在大多数时候在1 $σ$之内的已发布的结果一致,而在提取草率的同时,该行星信号具有相似或更高的统计意义。
Transmission spectroscopy is among the most fruitful techniques to infer the main opacity sources present in the upper atmosphere of a transiting planet and to constrain the composition of the thermosphere and of the unbound exosphere. Not having a public tool able to automatically extract a high-resolution transmission spectrum creates a problem of reproducibility for scientific results. As a consequence, it is very difficult to compare the results obtained by different research groups and to carry out a homogeneous characterization of the exoplanetary atmospheres. In this work, we present a standard, publicly available, user-friendly tool, named SLOPpy (Spectral Lines Of Planets with python), to automatically extract and analyze the optical transmission spectrum of exoplanets as accurately as possible. Several data reduction steps are first performed by SLOPpy to correct the input spectra for sky emission, atmospheric dispersion, the presence of telluric features and interstellar lines, center-to-limb variation, and Rossiter-McLaughlin effect, thus making it a state-of-the-art tool. The pipeline has successfully been applied to HARPS and HARPS-N data of ideal targets for atmospheric characterization. To first assess the code's performance and to validate its suitability, here we present a comparison with the results obtained from the previous analyses of other works on HD 189733 b, WASP-76 b, WASP-127 b, and KELT-20 b. Comparing our results with other works that have analyzed the same datasets, we conclude that this tool gives results in agreement with the published results within 1$σ$ most of the time, while extracting, with SLOPpy, the planetary signal with a similar or higher statistical significance.