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Multivariate Time-series Analysis of Variable Objects in the Gaia Mission

机译:盖亚任务中变量对象的多变量时间序列分析

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摘要

In astronomy, we are witnessing an enormous increase in the number of source detections, precision, and diversity of measurements. Additionally, multi-epoch data is becoming the norm, making time-series analyses an important aspect of current astronomy. The Gaia mission is an outstanding example of a multi-epoch survey that provides measurements in a large diversity of domains, with its broad-band photometry; spectrophotometry in blue and red (used to derive astrophysical parameters); spectroscopy (employed to infer radial velocities, v sin(i), and other astrophysical parameters); and its extremely precise astrometry. Most of all that information is provided for sources covering the entire sky. Here, we present several properties related to the Gaia time series, such as the time sampling; the different types of measurements; the Gaia G, G(BP) and G(RP)-band photometry; and Gaia-inspired studies using the CORrelation-RAdial-VELocities data to assess the potential of the information on the radial velocity, the FWHM, and the contrast of the cross-correlation function. We also present techniques (which are used or are under development) that optimize the extraction of astrophysical information from the different instruments of Gaia, such as the principal component analysis and the multi-response regression. The detailed understanding of the behavior of the observed phenomena in the various measurement domains can lead to richer and more precise characterization of the Gaia data, including the definition of more informative attributes that serve as input to (our) machine-learning algorithms.
机译:在天文学中,我们目睹了源检测,精度和测量多样性的巨大增加。此外,多时代数据正在成为规范,使时间序列分析当前天文学的一个重要方面。 Gaia Mission是一个多欧时调查的突出例子,其提供大多样性域,其宽带光度测量;蓝色和红色的分光光度法(用于衍生天体物理参数);光谱学(用于推断径向速度,V SIN(I)和其他天体物理参数);及其极其精确的星形。大多数信息都提供了覆盖整个天空的来源。在这里,我们提出了与盖亚时间序列相关的几个属性,例如时间采样;不同类型的测量;盖亚G,G(BP)和G(RP)频带测光;使用相关径向速度数据的GaIa激发研究,以评估关于径向速度,fwhm和互相关函数的对比度的信息的潜力。我们还存在技术(用于使用或正在开发的技术),从而从盖亚的不同仪器中优化astrophysical信息的提取,例如主要成分分析和多响应回归。详细了解各种测量域中观察到的现象的行为可能导致盖亚数据的更丰富和更精确的表征,包括更具信息丰富的属性的定义,该属性用作输入(我们的)机器学习算法的输入。

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