论文标题
通过恒星变异性的高斯过程建模改善过境表征
Improving transit characterisation with Gaussian process modelling of stellar variability
论文作者
论文摘要
用于检测和表征过渡系外行星的新的光度空间任务集中在明亮的恒星上,以获得高节奏,高信噪光曲线。由于这些任务将对恒星振荡和颗粒化敏感,即使对于矮星,它们也将受到恒星变异性的限制。我们测试了高斯过程(GP)回归对过境行星表征的性能,尤其是确定要描述高节奏的可变性成分,以描述高节奏,高信噪比的光曲线,而Cheops和Plato预期。我们发现,最佳的GP恒星变异性模型包含四到五个变异性分量:一个恒星振荡组件,2到4个颗粒成分和/或一个旋转调制组件。这种大量组件与文献中通常用于运输表征中常用的一组分GP模型(1GP)形成鲜明对比。因此,我们将最佳的多组分GP模型的性能与1GP模型进行了比较,从而在模拟传输的过境参数的推导中进行了比较。我们发现,对于木星和海王星大小的行星,最佳的多组分GP模型比1GP模型略好,并且比给出有偏见结果的非GP模型好得多。对于地球大小的行星,1GP模型无法检索过境,因为它是对恒星活动的不良描述。非GP模型给出了一些偏差的结果,最佳的多组分GP能够检索正确的过境模型参数。我们得出的结论是,当表征具有高信噪比和高节奏光曲线的过渡系外行星时,我们需要将恒星变异性描述与Transits分析(如GP)相结合的模型。此外,对于类似地球的系外行星,对恒星变异性的更好描述可改善行星的特征。
New photometric space missions to detect and characterise transiting exoplanets are focusing on bright stars to obtain high cadence, high signal-to-noise light curves. Since these missions will be sensitive to stellar oscillations and granulation even for dwarf stars, they will be limited by stellar variability. We tested the performance of Gaussian process (GP) regression on the characterisation of transiting planets, and in particular to determine how many components of variability are necessary to describe high cadence, high signal-to-noise light curves expected from CHEOPS and PLATO. We found that the best GP stellar variability model contains four to five variability components: one stellar oscillation component, two to four granulation components, and/or one rotational modulation component. This high number of components is in contrast with the one-component GP model (1GP) commonly used in the literature for transit characterisation. Therefore, we compared the performance of the best multi-component GP model with the 1GP model in the derivation of transit parameters of simulated transits. We found that for Jupiter- and Neptune-size planets the best multi-component GP model is slightly better than the 1GP model, and much better than the non-GP model that gives biased results. For Earth-size planets, the 1GP model fails to retrieve the transit because it is a poor description of stellar activity. The non-GP model gives some biased results and the best multi-component GP is capable of retrieving the correct transit model parameters. We conclude that when characterising transiting exoplanets with high signal-to-noise ratios and high cadence light curves, we need models that couple the description of stellar variability with the transits analysis, like GPs. Moreover, for Earth-like exoplanets a better description of stellar variability improves the planetary characterisation.