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Transiting Exoplanet Discovery Using Machine Learning Techniques: A Survey

机译:使用机器学习技术过期外出发现:调查

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摘要

Spatial missions such as the Kepler mission, and the Transiting Exoplanet Survey Satellite (TESS) mission, have encouraged data scientists to analyze light curve datasets. The purpose of analyzing these data is to look for planet transits, with the aim of discovering and validating exoplanets, which are planets found outside our Solar System. Furthermore, transiting exoplanets can be better characterized when light curves and radial velocity curves are available. The manual examination of these datasets is a task that requires big quantities of time and effort, and therefore is prone to errors. As a result, the application of machine learning methods has become more common on exoplanet discovery and categorization research. This survey presents an analysis on different exoplanet transit discovery algorithms based on machine learning, some of which even found new exoplanets. The analysis of these algorithms is divided into four steps, namely light curve preprocessing, possible exoplanet signal detection, and identification of the detected signal to decide whether it belongs to an exoplanet or not. We propose a model to create synthetic datasets of light curves, and we compare the performance of several machine learning models used to identify transit exoplanets, with inputs preprocessed with and without using the Discrete Wavelet Transform (DWT). Our experimental results allow us to conclude that multiresolution analysis in the time-frequency domain can improve exoplanet signal identification, because of the characteristics of light curves and transiting exoplanet signals.
机译:诸如推进者任务等空间任务,以及过度的Exoplanet调查卫星(TESS)使命,鼓励数据科学家分析光线数据集。分析这些数据的目的是寻找地球运输,目的是发现和验证外延网,这是我们太阳系外的行星。此外,当光曲线和径向速度曲线可获得时,可以更好地表征过渡的外部内部片。对这些数据集的手动检查是需要大量时间和努力的任务,因此容易出错。结果,机器学习方法的应用在外产发现和分类研究方面变得更加常见。该调查基于机器学习的不同Exoplanet Transit Discovery算法进行了分析,其中一些甚至发现了新的外延网。对这些算法的分析被分成四个步骤,即光曲线预处理,可能的外出信号检测,以及检测到的信号的识别,以确定它是否属于EXPOPLANET。我们提出了一种模型来创建光线曲线的合成数据集,我们比较了用于识别过境ExoplAnets的多种机器学习模型的性能,输入预处理的输入和不使用离散小波变换(DWT)。我们的实验结果允许我们得出结论,由于光曲线和过渡开端信号的特征,时频域中的多分辨率分析可以改善Exoplanet信号识别。

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