Sherwood Richers, Julien Froustey, Somdutta Ghosh, Francois Foucart, Javier Gomez
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引用次数: 0
摘要
中微子味道不稳定性似乎在高密度天体物理环境中无处不在,因此给大规模模拟核坍缩超新星和中子星合并(NSMs)带来了挑战。子网格模型提供了一条前进的道路,但需要准确确定这种转换现象的局部结果。我们重点研究了与中微子和反中微子角分布交叉有关的 "快速 "不稳定性,考虑了一系列分析混合方案,包括一种新的、完全三维的方案,还引入了一种新的机器学习(ML)模型。我们将这些模型的准确性与根据经典 NSM 模拟提取的条件对中微子演化进行的数千次局部动力学计算的结果进行了比较。我们的 ML 模型显示出良好的总体性能,但在泛化未用于训练的 NSM 模拟条件时却很吃力。多维分析模型的性能和泛化效果更好,而其他分析模型(假定中微子分布是不对称的)的性能并不可靠,因为它们在解释强各向异性产生的影响时明显失败。这里广泛测试的 ML 子网格模型和解析子网格模型都很有前途,但它们的计算要求和系统误差来源各不相同。
Asymptotic-state prediction for fast flavor transformation in neutron star mergers
Neutrino flavor instabilities appear to be omnipresent in dense astrophysical
environments, thus presenting a challenge to large-scale simulations of
core-collapse supernovae and neutron star mergers (NSMs). Subgrid models offer
a path forward, but require an accurate determination of the local outcome of
such conversion phenomena. Focusing on "fast" instabilities, related to the
existence of a crossing between neutrino and antineutrino angular
distributions, we consider a range of analytical mixing schemes, including a
new, fully three-dimensional one, and also introduce a new machine learning
(ML) model. We compare the accuracy of these models with the results of several
thousands of local dynamical calculations of neutrino evolution from the
conditions extracted from classical NSM simulations. Our ML model shows good
overall performance, but struggles to generalize to conditions from a NSM
simulation not used for training. The multidimensional analytic model performs
and generalizes even better, while other analytic models (which assume
axisymmetric neutrino distributions) do not have reliably high performances, as
they notably fail as expected to account for effects resulting from strong
anisotropies. The ML and analytic subgrid models extensively tested here are
both promising, with different computational requirements and sources of
systematic errors.