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Identifying Exoplanets with Deep Learning: A Five-planet Resonant Chain around Kepler-80 and an Eighth Planet around Kepler-90

机译:识别具有深度学习的外产网:围绕开普勒-80的五个星球谐振链和围绕开普勒-90的第八个行星

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NASA’s Kepler Space Telescope was designed to determine the frequency of Earth-sized planets orbiting Sun-like stars, but these planets are on the very edge of the mission’s detection sensitivity. Accurately determining the occurrence rate of these planets will require automatically and accurately assessing the likelihood that individual candidates are indeed planets, even at low signal-to-noise ratios. We present a method for classifying potential planet signals using deep learning, a class of machine learning algorithms that have recently become state-of-theart in a wide variety of tasks. We train a deep convolutional neural network to predict whether a given signal is a transiting exoplanet or a false positive caused by astrophysical or instrumental phenomena. Our model is highly effective at ranking individual candidates by the likelihood that they are indeed planets: 98.8% of the time it ranks plausible planet signals higher than false-positive signals in our test set. We apply our model to a new set of candidate signals that we identified in a search of known Kepler multi-planet systems. We statistically validate two new planets that are identified with high confidence by our model. One of these planets is part of a five-planet resonant chain around Kepler-80, with an orbital period closely matching the prediction by three-body Laplace relations. The other planet orbits Kepler-90, a star that was previously known to host seven transiting planets. Our discovery of an eighth planet brings Kepler-90 into a tie with our Sun as the star known to host the most planets.
机译:美国宇航局的开普勒空间望远镜旨在确定地球大小的行星轨道绕太阳恒星的频率,但这些行星处于特派团检测灵敏度的边缘。准确地确定这些行星的发生率将自动和准确地评估单个候选的可能性,即使在低信噪比下也是如此。我们介绍了一种使用深度学习进行分类潜在行星信号的方法,一类机器学习算法,最近在各种各样的任务中成为尾部。我们训练深度卷积神经网络,预测给定信号是否是过度的外部或由天体物理或乐器现象引起的假阳性。我们的模型在排名各个候选人方面非常有效,因为它们确实是行星的可能性:98.8%的时间在测试集中排名高于假正信号的合理行星信号。我们将我们的模型应用于我们在搜索已知的开普勒多行星系统中识别的新一组候选信号。我们在统计上验证了两个新的行星,这些行星通过我们的模型很高的信心。这些行星之一是围绕开普勒-80周围的五个行星谐振链的一部分,其中轨道周期与三体拉普拉斯关系的预测紧密匹配。另一个行星轨道开夹器-90,以前已知举办七个过渡行星的星形。我们发现第八个行星将ePPLER-90带入与我们的太阳作为众所周知的星级举办大多数星球的明星。

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