mlody -深度学习生成的极化同步加速器系数

J. Davelaar
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引用次数: 0

摘要

偏振同步辐射是高能天体物理学的一个基本过程,特别是在黑洞和脉冲星周围的环境中。这种辐射的精确建模需要精确计算发射、吸收、旋转和转换系数,这对辐射传输模拟至关重要。传统上,这些系数是使用基于预先计算的基础真值的拟合函数推导出来的。然而,这些拟合函数往往缺乏准确性,特别是在用于生成它们的数据集中没有很好地表示的特定等离子体条件下。在这项工作中,我们介绍了MLody,一种深度神经网络,用于在广泛的等离子体参数范围内以高精度计算极化同步加速器系数。我们通过将MLody与辐射传输代码集成来演示MLody的功能,以生成用于吸积黑洞模拟的合成偏振同步加速器图像。我们的结果显示,与传统方法相比,线偏振和圆偏振的显著差异高达2倍。这些差异可能对事件视界望远镜观测的参数估计具有重要意义,表明MLody可以提高未来天体物理分析的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MLody—Deep Learning–generated Polarized Synchrotron Coefficients
Polarized synchrotron emission is a fundamental process in high-energy astrophysics, particularly in the environments around black holes and pulsars. Accurate modeling of this emission requires precise computation of the emission, absorption, rotation, and conversion coefficients, which are critical for radiative transfer simulations. Traditionally, these coefficients are derived using fit functions based on precomputed ground truth values. However, these fit functions often lack accuracy, particularly in specific plasma conditions not well represented in the data sets used to generate them. In this work, we introduce MLody, a deep neural network designed to compute polarized synchrotron coefficients with high accuracy across a wide range of plasma parameters. We demonstrate MLody's capabilities by integrating it with a radiative transfer code to generate synthetic polarized synchrotron images for an accreting black hole simulation. Our results reveal significant differences, up to a factor of 2, in both linear and circular polarization compared to traditional methods. These differences could have important implications for parameter estimation in Event Horizon Telescope observations, suggesting that MLody could enhance the accuracy of future astrophysical analyses.
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