论文标题

在存在相关磁噪声的情况下检测随机重力波背景

Detecting a stochastic gravitational-wave background in the presence of correlated magnetic noise

论文作者

Meyers, Patrick M., Martinovic, Katarina, Christensen, Nelson, Sakellariadou, Mairi

论文摘要

从未解决的紧凑型二元融合中检测到随机重力波背景(SGWB),可以通过高级Ligo和高级处女座的设计敏感性进行。但是,在空间分离的地面检测器之间与模拟SGWB信号之间的磁噪声相关。在本文中,我们提出了一种检测相关磁噪声并将其与真实SGWB信号分开的新方法。解决相关磁噪声的一种常见方法是使用Wiener滤波在原始数据中连贯的减法。此处提出的方法使用磁力计到应变耦合功能的参数化模型,以及从局部磁力计的测量值,以估计相关噪声对传统SGWB检测统计量的贡献。然后,我们使用贝叶斯模型选择来区分包括相关磁噪声和具有SGWB的模型。现实的模拟用于表明此方法由于相关的磁噪声而导致错误的SGWB检测。我们还证明,在存在强相关磁噪声的情况下,它可用于检测SGWB,尽管与无相关噪声相比具有降低的显着性。最后,我们讨论了使用全局三探测器网络识别和表征相关磁噪声的优势。

A detection of the stochastic gravitational-wave background (SGWB) from unresolved compact binary coalescences could be made by Advanced LIGO and Advanced Virgo at their design sensitivities. However, it is possible for magnetic noise that is correlated between spatially separated ground-based detectors to mimic a SGWB signal. In this paper we propose a new method for detecting correlated magnetic noise and separating it from a true SGWB signal. A commonly discussed method for addressing correlated magnetic noise is coherent subtraction in the raw data using Wiener filtering. The method proposed here uses a parameterized model of the magnetometer-to-strain coupling functions, along with measurements from local magnetometers, to estimate the contribution of correlated noise to the traditional SGWB detection statistic. We then use Bayesian model selection to distinguish between models that include correlated magnetic noise and those with a SGWB. Realistic simulations are used to show that this method prevents a false SGWB detection due to correlated magnetic noise. We also demonstrate that it can be used for a detection of a SGWB in the presence of strong correlated magnetic noise, albeit with reduced significance compared to the case with no correlated noise. Finally, we discuss the advantages of using a global three-detector network for both identifying and characterizing correlated magnetic noise.

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