Exoplanet detection in the past decade by efforts including NASA's Kepler and TESS missions has discovered many worlds that differ substantially from planets in our own Solar system, including more than 400 exoplanets orbiting binary or multi-star systems. This not only broadens our understanding of the diversity of exoplanets, but also promotes our study of exoplanets in the complex binary and multi-star systems and provides motivation to explore their habitability. In this study, we analyze orbital stability of exoplanets in non-coplanar circumbinary systems using a numerical simulation method, with which a large number of circumbinary planet samples are generated in order to quantify the effects of various orbital parameters on orbital stability. We also train a machine learning model that can quickly determine the stability of the circumbinary planetary systems. Our results indicate that larger inclinations of the planet tend to increase the stability of its orbit, but change in the planet's mass range between Earth and Jupiter has little effect on the stability of the system. In addition, we find that Deep Neural Networks (DNNs) have higher accuracy and precision than other machine learning algorithms.
翻译:过去十年来,美国航天局的开普勒和TESS飞行任务通过包括美国航天局的开普勒和TESS飞行任务在内的各种努力探测了外行星,发现了许多与我们太阳系中的行星截然不同的世界,包括400多个环绕双星或多星系统的外行星,这不仅扩大了我们对外行星多样性的了解,而且还促进了我们对复杂二星和多星系统的外行星的研究,并提供了探索其适居性的积极性。在这项研究中,我们利用数字模拟方法分析了非双行星环绕环绕系统的外行星的轨道稳定性,产生了大量的环比行星样本,以量化各种轨道参数对轨道稳定性的影响。我们还训练了机器学习模型,可以迅速确定环比行星系统的稳定性。我们的结果显示,行星的更大趋势倾向于增加其轨道的稳定性,但地球和木星之间行星质量范围的变化对系统稳定性影响不大。此外,我们发现深神经网络(DNNUS)比其他机器学习算法的精确度更高。