生成星群现实的机器学习框架

IF 5.4 2区 物理与天体物理 Q1 ASTRONOMY & ASTROPHYSICS
George P. Prodan, Mario Pasquato, Giuliano Iorio, Alessandro Ballone, Stefano Torniamenti, Ugo Niccolò Di Carlo, Michela Mapelli
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引用次数: 0

摘要

背景。计算天文学已经发展到可以对恒星系统(如银河系星团)进行引力 N-体模拟计算的阶段,但仍然存在的一个主要限制因素是建立物理上真实的初始条件的能力。我们的目标是利用机器学习的优势,为 N-体模拟获取真实的初始条件,重点是再现小尺度星际距离分布。获得这种距离分布的计算瓶颈是恒星形成的流体力学,它最终决定了恒星的特征,包括位置、速度和质量。为缓解这一问题,我们引入了一种新方法,利用高斯过程从有限的模拟集合中抽取物理上真实的初始条件。我们根据所得到的初始条件集是否符合物理真实性检验标准对其进行了评估。我们发现,基于恒星特征分布的直接采样无法再现双星系统。因此,我们证明了物理信息采样算法可以解决这个问题,因为它们能够生成更接近现实的模拟结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A machine learning framework to generate star cluster realisations
Context. Computational astronomy has reached the stage where running a gravitational N-body simulation of a stellar system, such as a Milky Way star cluster, is computationally feasible, but a major limiting factor that remains is the ability to set up physically realistic initial conditions.Aims. We aim to obtain realistic initial conditions for N-body simulations by taking advantage of machine learning, with emphasis on reproducing small-scale interstellar distance distributions.Methods. The computational bottleneck for obtaining such distance distributions is the hydrodynamics of star formation, which ultimately determine the features of the stars, including positions, velocities, and masses. To mitigate this issue, we introduce a new method for sampling physically realistic initial conditions from a limited set of simulations using Gaussian processes.Results. We evaluated the resulting sets of initial conditions based on whether they meet tests for physical realism. We find that direct sampling based on the learned distribution of the star features fails to reproduce binary systems. Consequently, we show that physics-informed sampling algorithms solve this issue, as they are capable of generating realisations closer to reality.
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来源期刊
Astronomy & Astrophysics
Astronomy & Astrophysics 地学天文-天文与天体物理
CiteScore
10.20
自引率
27.70%
发文量
2105
审稿时长
1-2 weeks
期刊介绍: Astronomy & Astrophysics is an international Journal that publishes papers on all aspects of astronomy and astrophysics (theoretical, observational, and instrumental) independently of the techniques used to obtain the results.
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