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Processing and managing the Kepler mission's treasure trove of stellar and exoplanet data

机译:处理和管理开普勒任务的恒星和系外行星数据宝库

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The Kepler telescope launched into orbit in March 2009, initiating NASA's first mission to discover Earth-size planets orbiting Sun-like stars. Kepler simultaneously collected data for ~160,000 target stars at a time over its four-year mission, identifying over 4700 planet candidates, 2300 confirmed or validated planets, and over 2100 eclipsing binaries. While Kepler was designed to discover exoplanets, the long term, ultra-high photometric precision measurements it achieved made it a premier observational facility for stellar astrophysics, especially in the field of asteroseismology, and for variable stars, such as RR Lyraes. The Kepler Science Operations Center (SOC) was developed at NASA Ames Research Center to process the data acquired by Kepler from pixel-level calibrations all the way to identifying transiting planet signatures and subjecting them to a suite of diagnostic tests to establish or break confidence in their planetary nature. Detecting small, rocky planets transiting Sun-like stars presents a variety of daunting challenges, from achieving an unprecedented photometric precision of ~20 parts per million (ppm) on 6.5-hour timescales, supporting the science operations, management, processing, and repeated reprocessing of the accumulating data stream. This paper describes how the design of the SOC meets these varied challenges, discusses the architecture of the SOC and how the SOC pipeline is operated and is run on the NAS Pleiades supercomputer, and summarizes the most important pipeline features addressing the multiple computational, image and signal processing challenges posed by Kepler.
机译:开普勒望远镜于2009年3月进入轨道,启动了NASA的第一个任务,即发现绕太阳样恒星运行的地球大小的行星。开普勒在其四年任务中同时一次收集了约160,000个目标恒星的数据,确定了4700多颗候选行星,2300颗经过确认或验证的行星以及2100颗以上的日食双星。开普勒旨在发现系外行星,但长期的超高光度精度测量使其成为恒星天体物理学(尤其是在星震学领域)以及可变恒星(例如RR天琴座)的首选观测设备。开普勒科学运营中心(SOC)是由美国宇航局艾姆斯研究中心开发的,用于处理开普勒从像素级校准获取的数据,一直到识别过渡行星的特征并对其进行一系列诊断测试,以建立或打破对它们的信心。他们的行星性质。从6.5小时的时间尺度上达到空前的百万分之一(ppm)20的光度测量精度,支持科学操作,管理,处理和重复处理,检测流过类似太阳的恒星的小岩石行星提出了许多艰巨的挑战。累积数据流的数量。本文介绍了SOC的设计如何应对这些挑战,讨论了SOC的体系结构以及SOC管道如何在NAS Pleiades超级计算机上运行和运行,并总结了解决多种计算,图像和处理问题的最重要的管道功能。开普勒带来的信号处理挑战。

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