在 TESS 多行星系统中寻找更多行星:测试基于开普勒数据的经验模型

Emma V. Turtelboom, Jamie Dietrich, Courtney D. Dressing, Caleb K. Harada
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摘要

多行星系统结构经常被用来制约已观测到的系外行星的可能形成和演化路径。因此,了解这些系统的经验模型的预测和描述能力对于了解它们的形成历史至关重要。此外,如果经验模型能够在一定范围内再现体系结构,那么就可以更容易、更有效地利用凌日和径向速度观测来为未来的微透镜、天体测量和直接成像巡天提供信息。我们分析了以前用Dynamite(Dietrich & Apai 2020)研究过的52个TESS多行星系统,Dynamite使用TESS数据和基于开普勒行星的经验模型来预测每个系统中的其他行星。我们分析了额外的 TESS 数据,以寻找这些预测到的行星。具体来说,我们研究了是周期比方法还是聚类周期模型更具有预测性。我们发现,考虑到探测灵敏度,周期比模型的预测与2020年以来发现的行星最为一致。然而,这两种模型的预测性都不高,这突出表明需要更多的数据和细微的模型来描述全部行星。我们还发现,目前的 183 个 TESS 多行星系统样本都是高度动态密集的,而且相对于探测偏差来说,似乎是截断的。这些特征与开普勒样本是一致的,表明了一个高效的形成过程。
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Searching for Additional Planets in TESS Multi-Planet Systems: Testing Empirical Models Based on Kepler Data
Multi-planet system architectures are frequently used to constrain possible formation and evolutionary pathways of observed exoplanets. Therefore, understanding the predictive and descriptive power of empirical models of these systems is critical to understanding their formation histories. Additionally, if empirical models can reproduce architectures over a range of scales, transit and radial velocity observations can be more easily and effectively used to inform future microlensing, astrometric, and direct imaging surveys. We analyze 52 TESS multi-planet systems previously studied using Dynamite (Dietrich & Apai 2020), who used TESS data alongside empirical models based on Kepler planets to predict additional planets in each system. We analyze additional TESS data to search for these predicted planets. We thereby evaluate the degree to which these models can be used to predict planets in TESS multi-planet systems. Specifically, we study whether a period ratio method or clustered period model is more predictive. We find that the period ratio model predictions are most consistent with the planets discovered since 2020, accounting for detection sensitivity. However, neither model is highly predictive, highlighting the need for additional data and nuanced models to describe the full population. Improved eccentricity and dynamical stability prescriptions incorporated into Dynamite provide a modest improvement in the prediction accuracy. We also find that the current sample of 183 TESS multi-planet systems are are highly dynamically packed, and appear truncated relative to detection biases. These attributes are consistent with the Kepler sample, and suggest a highly efficient formation process.
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