首页> 外文期刊>The astronomical journal >Shallow Transits—Deep Learning. I. Feasibility Study of Deep Learning to Detect Periodic Transits of Exoplanets
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Shallow Transits—Deep Learning. I. Feasibility Study of Deep Learning to Detect Periodic Transits of Exoplanets

机译:浅公交-深度学习。 I.深度学习检测系外行星周期性过境的可行性研究

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Transits of habitable planets around solar-like stars are expected to be shallow, and to have long periods, which means low information content. The current bottleneck in the detection of such transits is caused in large part by the presence of red (correlated) noise in the light curves obtained from the dedicated space telescopes. Based on the groundbreaking results deep learning achieves in many signal and image processing applications, we propose to use deep neural networks to solve this problem. We present a feasibility study, in which we applied a convolutional neural network on a simulated training set. The training set comprised light curves received from a hypothetical high-cadence space-based telescope. We simulated the red noise by using Gaussian Processes with a wide variety of hyper-parameters. We then tested the network on a completely different test set simulated in the same way. Our study proves that very difficult cases can indeed be detected. Furthermore, we show how detection trends can be studied and detection biases quantified. We have also checked the robustness of the neural-network performance against practical artifacts such as outliers and discontinuities, which are known to affect space-based high-cadence light curves. Future work will allow us to use the neural networks to characterize the transit model and identify individual transits. This new approach will certainly be an indispensable tool for the detection of habitable planets in the future planet-detection space missions such as PLATO.
机译:围绕太阳状恒星的宜居行星的过境预计将很浅,而且周期较长,这意味着信息含量较低。当前探测此类过境的瓶颈很大程度上是由专用太空望远镜获得的光曲线中存在红色(相关)噪声引起的。基于深度学习在许多信号和图像处理应用中取得的开创性成果,我们建议使用深度神经网络来解决此问题。我们提出了一项可行性研究,其中我们在模拟训练集上应用了卷积神经网络。训练集包括从假设的高节奏天基望远镜接收到的光曲线。我们通过使用具有多种超参数的高斯过程来模拟红色噪声。然后,我们在以相同方式模拟的完全不同的测试集上测试了网络。我们的研究证明,确实可以发现非常困难的案件。此外,我们展示了如何研究检测趋势并量化检测偏差。我们还检查了神经网络性能相对于异常值和不连续性等实际工件的鲁棒性,这些已知工件会影响基于空间的高节奏光曲线。未来的工作将使我们能够使用神经网络来表征运输模型并识别单个运输。对于未来的行星探测太空任务(如PLATO),这种新方法无疑将是探测宜居行星的必不可少的工具。

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