Bo Liang, Hong Guo, Tianyu Zhao, He wang, Herik Evangelinelis, Yuxiang Xu, Chang liu, Manjia Liang, Xiaotong Wei, Yong Yuan, Peng Xu, Minghui Du, Wei-Liang Qian, Ziren Luo
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引用次数: 0
Abstract
Extreme-mass-ratio inspiral (EMRI) signals pose significant challenges in
gravitational wave (GW) astronomy owing to their low-frequency nature and
highly complex waveforms, which occupy a high-dimensional parameter space with
numerous variables. Given their extended inspiral timescales and low
signal-to-noise ratios, EMRI signals warrant prolonged observation periods.
Parameter estimation becomes particularly challenging due to non-local
parameter degeneracies, arising from multiple local maxima, as well as flat
regions and ridges inherent in the likelihood function. These factors lead to
exceptionally high time complexity for parameter analysis while employing
traditional matched filtering and random sampling methods. To address these
challenges, the present study applies machine learning to Bayesian posterior
estimation of EMRI signals, leveraging the recently developed flow matching
technique based on ODE neural networks. Our approach demonstrates computational
efficiency several orders of magnitude faster than the traditional Markov Chain
Monte Carlo (MCMC) methods, while preserving the unbiasedness of parameter
estimation. We show that machine learning technology has the potential to
efficiently handle the vast parameter space, involving up to seventeen
parameters, associated with EMRI signals. Furthermore, to our knowledge, this
is the first instance of applying machine learning, specifically the Continuous
Normalizing Flows (CNFs), to EMRI signal analysis. Our findings highlight the
promising potential of machine learning in EMRI waveform analysis, offering new
perspectives for the advancement of space-based GW detection and GW astronomy.
极端质量比吸气(EMRI)信号对引力波(GW)天文学构成了重大挑战,因为它们的频率低,波形非常复杂,占据了一个有无数变量的高维参数空间。由于多个局部最大值产生的非局部参数退化,以及似然函数中固有的平坦区域和山脊,参数估计变得特别具有挑战性。这些因素导致采用传统匹配滤波和随机抽样方法进行参数分析的时间复杂度异常高。为了应对这些挑战,本研究利用最近开发的基于 ODE 神经网络的流量匹配技术,将机器学习应用于 EMRI 信号的贝叶斯后验估计。与传统的马尔可夫链蒙特卡洛(MCMC)方法相比,我们的方法在保持参数估计无偏性的同时,计算效率快了几个数量级。我们的研究表明,机器学习技术有潜力高效处理与 EMRI 信号相关的庞大参数空间,其中涉及多达十七个参数。此外,据我们所知,这是首次将机器学习,特别是连续归一化流(CNFs)应用于 EMRI 信号分析。我们的研究结果凸显了机器学习在 EMRI 波形分析中的巨大潜力,为天基全球风暴探测和全球风暴天文学的发展提供了新的视角。