论文标题
通过特征学习检测和诊断陆地重力波模仿
Detecting and Diagnosing Terrestrial Gravitational-Wave Mimics Through Feature Learning
论文作者
论文摘要
随着工程系统的复杂性的增长,对自动方法的需求越来越大,可以检测,诊断甚至正确的瞬时异常,而这些异常不可避免地会出现,并且很难或不可能手动诊断和修复。我们文明最敏感,最复杂的系统之一是探测器,这些探测器在引力波引起的距离中寻找令人难以置信的较小变化 - 由于黑孔与深空中黑洞与其他大型物体之间的碰撞,艾尔伯特·爱因斯坦(Albert Einstein)最初预测并在宇宙中传播的现象。此类检测器的极端复杂性和精度使它们受到瞬时噪声问题的影响,这些问题可能会大大限制其灵敏度和有效性。在这项工作中,我们介绍了一种可以检测并表征这种大规模复杂系统的新兴瞬态异常的方法的证明。我们通过一个普遍的问题之一来说明自动化解决方案的性能,精度和适应性,限制了引力波发现:陆地起源的噪声伪像,污染了引力波观测体的高度敏感测量,并且可以模仿甚至模仿他们正在聆听的微弱天体物理信号。具体而言,我们演示了高度可解释的卷积分类器如何自动学习从辅助检测器数据中检测瞬态异常,而无需观察异常本身。我们还说明了该模型的其他几个有用的功能,包括它如何执行自动变量选择以将数万个辅助数据渠道降低到只有几个相关的功能;它如何识别这些通道中异常情况的行为特征;以及如何使用它来研究单个异常及其相关的渠道。
As engineered systems grow in complexity, there is an increasing need for automatic methods that can detect, diagnose, and even correct transient anomalies that inevitably arise and can be difficult or impossible to diagnose and fix manually. Among the most sensitive and complex systems of our civilization are the detectors that search for incredibly small variations in distance caused by gravitational waves -- phenomena originally predicted by Albert Einstein to emerge and propagate through the universe as the result of collisions between black holes and other massive objects in deep space. The extreme complexity and precision of such detectors causes them to be subject to transient noise issues that can significantly limit their sensitivity and effectiveness. In this work, we present a demonstration of a method that can detect and characterize emergent transient anomalies of such massively complex systems. We illustrate the performance, precision, and adaptability of the automated solution via one of the prevalent issues limiting gravitational-wave discoveries: noise artifacts of terrestrial origin that contaminate gravitational wave observatories' highly sensitive measurements and can obscure or even mimic the faint astrophysical signals for which they are listening. Specifically, we demonstrate how a highly interpretable convolutional classifier can automatically learn to detect transient anomalies from auxiliary detector data without needing to observe the anomalies themselves. We also illustrate several other useful features of the model, including how it performs automatic variable selection to reduce tens of thousands of auxiliary data channels to only a few relevant ones; how it identifies behavioral signatures predictive of anomalies in those channels; and how it can be used to investigate individual anomalies and the channels associated with them.