灵活的gpu加速方法联合表征LISA仪器噪声和随机引力波背景

IF 5.3 2区 物理与天体物理 Q1 Physics and Astronomy
Alessandro Santini, Martina Muratore, Jonathan Gair, Olaf Hartwig
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引用次数: 0

摘要

LISA的数据分析是引力波(GW)天文学面临的最具挑战性的任务之一。在拟合所有其他可检测源的同时,表征仪器的噪声特性是任何鲁棒推理管道的关键要求。噪声估计也将在宇宙和天体物理随机信号的搜索和参数估计中发挥关键作用。先前的研究通过假设仪器噪声的频谱形状和不同可能类型的随机GW背景(sgwb)的完美知识来解决这个问题,通常采用参数化模板。最近出现了许多采用模板不可知方法的作品。在这项工作中,我们采取了进一步的措施,在仪器噪声和随机信号中引入了灵活的频谱形状。我们通过使用样条表示噪声和信号谱密度的任意扰动来解释缺乏对总体功率谱密度的个体贡献的确切形状的知识。我们实现了一种数据驱动的可逆跳跃马尔可夫链蒙特卡罗算法,以同时拟合不同的组件,并推断不同场景下所需的灵活性水平。我们在不同假设下产生的模拟LISA数据上测试了这种方法。我们研究了这种增加的灵活性对注入信号和噪声水平重建的影响,并讨论了声称成功检测SGWB的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flexible, GPU-accelerated approach for the joint characterization of LISA instrumental noise and stochastic gravitational wave backgrounds
LISA data analysis represents one of the most challenging tasks ahead for gravitational wave (GW) astronomy. Characterizing the instrument’s noise properties while fitting for all the other detectable sources is a key requirement of any robust inference pipeline. Noise estimation will also play a crucial role in searches and parameter estimation of cosmological and astrophysical stochastic signals. Previous studies have tackled this topic by assuming perfect knowledge of the spectral shape of the instrumental noise and of different possible types of stochastic GW backgrounds (SGWBs), usually resorting to parametrized templates. Recently, various works that employ template-agnostic methods have been presented. In this work, we take an additional step further, introducing flexible spectral shapes in both the instrumental noise and the stochastic signals. We account for the lack of knowledge of the exact shape of the individual contributions to the overall power spectral density by using splines to represent arbitrary perturbations of the noise and signal spectral densities. We implement a data-driven reversible jump Markov chain Monte Carlo algorithm to fit different components simultaneously and to infer the level of flexibility required under different scenarios. We test this approach on simulated LISA data produced under different assumptions. We investigate the impact of this increased flexibility on the reconstruction of both the injected signal and the noise level, and we discuss the prospects for claiming a successful SGWB detection.
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来源期刊
Physical Review D
Physical Review D 物理-天文与天体物理
CiteScore
9.20
自引率
36.00%
发文量
0
审稿时长
2 months
期刊介绍: Physical Review D (PRD) is a leading journal in elementary particle physics, field theory, gravitation, and cosmology and is one of the top-cited journals in high-energy physics. PRD covers experimental and theoretical results in all aspects of particle physics, field theory, gravitation and cosmology, including: Particle physics experiments, Electroweak interactions, Strong interactions, Lattice field theories, lattice QCD, Beyond the standard model physics, Phenomenological aspects of field theory, general methods, Gravity, cosmology, cosmic rays, Astrophysics and astroparticle physics, General relativity, Formal aspects of field theory, field theory in curved space, String theory, quantum gravity, gauge/gravity duality.
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