论文标题
几乎极端黑洞旋转的数值伴侣替代建模
Numerical-relativity surrogate modeling with nearly extremal black-hole spins
论文作者
论文摘要
二进制黑洞(BBH)系统的数值相对性(NR)模拟提供了最准确的引力波预测,但是以高计算成本为基础 - 尤其是当黑洞几乎具有极端旋转时(即在理论上限附近旋转)或非常不平等的质量。最近,减少订单建模的技术(ROM)使得在现有的NR波形集合中训练了替代模型。替代模型可以快速计算BBHS发出的重力波。通常,这些模型用于插值来计算训练组范围内的质量比和旋转的BBH的重力波形。由于具有几乎极端旋转的模拟在技术上是如此具有挑战性,因此替代模型几乎总是依赖于中等旋转的训练集。在本文中,我们探讨了当训练组仅包括中度旋转时,替代模型如何推断出几乎极端的旋转。为简单起见,我们专注于一维替代模型,该模型在具有相等质量且相等的旋转的BBHS的NR模拟上训练。我们通过计算外推代替代模型波形和NR波形之间的不匹配,通过计算持久黑孔质量的外推和NR测量之间的差异来评估替代模型在较高自旋幅度下的性能,并通过测试替代模型如何改进训练集扩展到更高的旋翼。我们发现,虽然在这种一维情况下的外推对于当前的检测器敏感性可行,但下一代探测器的替代模型应使用训练集,以扩展到几乎极端的自旋。
Numerical relativity (NR) simulations of binary black hole (BBH) systems provide the most accurate gravitational wave predictions, but at a high computational cost -- especially when the black holes have nearly extremal spins (i.e. spins near the theoretical upper limit) or very unequal masses. Recently, the technique of Reduced Order Modeling (ROM) has enabled the construction of surrogate models trained on an existing set of NR waveforms. Surrogate models enable the rapid computation of the gravitational waves emitted by BBHs. Typically these models are used for interpolation to compute gravitational waveforms for BBHs with mass ratios and spins within the bounds of the training set. Because simulations with nearly extremal spins are so technically challenging, surrogate models almost always rely on training sets with only moderate spins. In this paper, we explore how well surrogate models can extrapolate to nearly extremal spins when the training set only includes moderate spins. For simplicity, we focus on one-dimensional surrogate models trained on NR simulations of BBHs with equal masses and equal, aligned spins. We assess the performance of the surrogate models at higher spin magnitudes by calculating the mismatches between extrapolated surrogate model waveforms and NR waveforms, by calculating the differences between extrapolated and NR measurements of the remnant black-hole mass, and by testing how the surrogate model improves as the training set extends to higher spins. We find that while extrapolation in this one-dimensional case is viable for current detector sensitivities, surrogate models for next-generation detectors should use training sets that extend to nearly extremal spins.