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Gravity Spy: integrating advanced LIGO detector characterization machine learning and citizen science

机译:Gravity Spy:集成了先进的LIGO检测器表征机器学习和公民科学

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摘要

With the first direct detection of gravitational waves, the advanced laser interferometer gravitational-wave observatory (LIGO) has initiated a new field of astronomy by providing an alternative means of sensing the universe. The extreme sensitivity required to make such detections is achieved through exquisite isolation of all sensitive components of LIGO from non-gravitational-wave disturbances. Nonetheless, LIGO is still susceptible to a variety of instrumental and environmental sources of noise that contaminate the data. Of particular concern are noise features known as glitches, which are transient and non-Gaussian in their nature, and occur at a high enough rate so that accidental coincidence between the two LIGO detectors is non-negligible. Glitches come in a wide range of time-frequency-amplitude morphologies, with new morphologies appearing as the detector evolves. Since they can obscure or mimic true gravitational-wave signals, a robust characterization of glitches is paramount in the effort to achieve the gravitational-wave detection rates that are predicted by the design sensitivity of LIGO. This proves a daunting task for members of the LIGO Scientific Collaboration alone due to the sheer amount of data. In this paper we describe an innovative project that combines crowdsourcing with machine learning to aid in the challenging task of categorizing all of the glitches recorded by the LIGO detectors. Through the Zooniverse platform, we engage and recruit volunteers from the public to categorize images of time-frequency representations of glitches into pre-identified morphological classes and to discover new classes that appear as the detectors evolve. In addition, machine learning algorithms are used to categorize images after being trained on human-classified examples of the morphological classes. Leveraging the strengths of both classification methods, we create a combined method with the aim of improving the efficiency and accuracy of each individual classifier. The resulting classification and characterization should help LIGO scientists to identify causes of glitches and subsequently eliminate them from the data or the detector entirely, thereby improving the rate and accuracy of gravitational-wave observations. We demonstrate these methods using a small subset of data from LIGO’s first observing run.
机译:随着首次直接检测引力波,先进的激光干涉仪引力波天文台(LIGO)通过提供一种替代的感知宇宙的方法,开创了天文学的新领域。通过将LIGO的所有敏感组件与非重力波扰动完全隔离,可以实现进行此类检测所需的极高灵敏度。尽管如此,LIGO仍然容易受到污染数据的各种仪器和环境噪声源的影响。特别令人关注的是被称为毛刺的噪声特征,其本质上是瞬态且非高斯的,并且以足够高的速率发生,因此两个LIGO检测器之间的偶然重合是不可忽略的。毛刺有很多种时频幅度形态,随着检测器的发展,出现了新的形态。由于它们可以掩盖或模拟真实的重力波信号,因此对于实现由LIGO的设计灵敏度预测的重力波检测率的努力,故障的稳健表征至关重要。由于数量庞大的数据,仅对于LIGO科学合作组织的成员来说,这是一项艰巨的任务。在本文中,我们描述了一个创新项目,该项目将众包与机器学习相结合,以帮助对LIGO检测器记录的所有故障进行分类这一艰巨的任务。通过Zooniverse平台,我们吸引并招募了公众志愿者,以将故障的时频表示图像分类为预先确定的形态学类别,并发现随着探测器发展而出现的新类别。此外,机器学习算法在经过人类分类的形态学分类示例训练后,用于对图像进行分类。利用两种分类方法的优势,我们创建了一种组合方法,旨在提高每个单独分类器的效率和准确性。最终的分类和表征应有助于LIGO科学家识别毛刺的原因,随后将其从数据或检测器中完全消除,从而提高重力波观测的速度和准确性。我们使用LIGO第一次观测运行的一小部分数据来演示这些方法。

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