教暗物质模拟说光环语言

Shivam Pandey, Francois Lanusse, Chirag Modi, Benjamin D. Wandelt
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引用次数: 0

摘要

我们为离散点物体及其属性开发了一个基于变换器的条件生成模型。我们用它建立了一个模型,用于在宇宙学模拟中填充被称为暗物质晕的引力塌缩结构。具体地说,我们用从快速近似模拟中获得的暗物质分布作为我们模型的条件,以恢复单个光环的正确三维位置和质量。这个训练有素的模型可以应用于体积很大的模拟,否则传统模拟的计算量将会非常大,同时也为端到端可分辨宇宙学模拟提供了一个关键的缺失环节。该代码被命名为GOTHAM(GenerativecOnditional Transformer for Halo's Auto-regressive Modeling),可在(url{https://github.com/shivampcosmo/GOTHAM})上公开获取。
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Teaching dark matter simulations to speak the halo language
We develop a transformer-based conditional generative model for discrete point objects and their properties. We use it to build a model for populating cosmological simulations with gravitationally collapsed structures called dark matter halos. Specifically, we condition our model with dark matter distribution obtained from fast, approximate simulations to recover the correct three-dimensional positions and masses of individual halos. This leads to a first model that can recover the statistical properties of the halos at small scales to better than 3% level using an accelerated dark matter simulation. This trained model can then be applied to simulations with significantly larger volumes which would otherwise be computationally prohibitive with traditional simulations, and also provides a crucial missing link in making end-to-end differentiable cosmological simulations. The code, named GOTHAM (Generative cOnditional Transformer for Halo's Auto-regressive Modeling) is publicly available at \url{https://github.com/shivampcosmo/GOTHAM}.
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