RASSINE: Interactive tool for normalising stellar spectra

M. Cretignier, J. Francfort, X. Dumusque, R. Allart, F. Pepe
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引用次数: 7

Abstract

Aims: We provide an open-source code allowing an easy, intuitive, and robust normalisation of spectra. Methods: We developed RASSINE, a Python code for normalising merged 1D spectra through the concepts of convex hulls. The code uses six parameters that can be easily fine-tuned. The code also provides a complete user-friendly interactive interface, including graphical feedback, that helps the user to choose the parameters as easily as possible. To facilitate the normalisation even further, RASSINE can provide a first guess for the parameters that are derived directly from the merged 1D spectrum based on previously performed calibrations. Results: For HARPS spectra of the Sun that were obtained with the HELIOS solar telescope, a continuum accuracy of 0.20% on line depth can be reached after normalisation with RASSINE. This is three times better than with the commonly used method of polynomial fitting. For HARPS spectra of $\alpha$ Cen B, a continuum accuracy of 2.0% is reached. This rather poor accuracy is mainly due to molecular band absorption and the high density of spectral lines in the bluest part of the merged 1D spectrum. When wavelengths shorter than 4500 Aare excluded, the continuum accuracy improves by up to 1.2%. The line-depth precision on individual spectrum normalisation is estimated to be 0.15%, which can be reduced to the photon-noise limit (0.10%) when a time series of spectra is given as input for RASSINE. Conclusions: With a continuum accuracy higher than the polynomial fitting method and a line-depth precision compatible with photon noise, RASSINE is a tool that can find applications in numerous cases, for example stellar parameter determination, transmission spectroscopy of exoplanet atmospheres, or activity-sensitive line detection.
用于规范化恒星光谱的交互工具
目的:我们提供了一个开放源代码,允许光谱的简单,直观和健壮的规范化。方法:我们开发了RASSINE,一个Python代码,用于通过凸包的概念规范化合并的一维光谱。代码使用了6个参数,可以很容易地进行微调。代码还提供了一个完整的用户友好的交互界面,包括图形反馈,帮助用户尽可能容易地选择参数。为了进一步促进归一化,RASSINE可以根据先前执行的校准,为直接从合并的1D光谱中导出的参数提供初步猜测。结果:利用HELIOS太阳望远镜获得的太阳HARPS光谱,经RASSINE归一化后,线深连续精度可达0.20%。这比常用的多项式拟合方法要好三倍。对于$\alpha$ Cen B的HARPS光谱,连续精度达到2.0%。这种相当差的精度主要是由于分子带吸收和合并1D光谱中最蓝部分的谱线密度高。当波长小于4500 aet时,连续体精度提高了1.2%。估计单个光谱归一化的线深精度为0.15%,当给出一个时间序列的光谱作为RASSINE的输入时,可以将其降低到光子噪声极限(0.10%)。结论:RASSINE连续体精度高于多项式拟合方法,线深精度与光子噪声兼容,可以在许多情况下找到应用,例如恒星参数测定,系外行星大气透射光谱,或活动敏感线检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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