A forward-modelling approach to overcome PSF smearing and fit flexible models to the chemical structure of galaxies

Benjamin Metha, S. Birrer, T. Treu, M. Trenti, Xuheng Ding, Xin Wang
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Abstract

https://github.com/astrobenji/lenstronomy-metals-notebooks Historically, metallicity profiles of galaxies have been modelled using a radially symmetric, two-parameter linear model, which reveals that most galaxies are more metal-rich in their central regions than their outskirts. However, this model is known to yield inaccurate results when the point-spread function (PSF) of a telescope is large. Furthermore, a radially symmetric model cannot capture asymmetric structures within a galaxy. In this work, we present an extension of the popular forward-modelling python package lenstronomy, which allows the user to overcome both of these obstacles. We demonstrate the new features of this code base through two illustrative examples on simulated data. First, we show that through forward modelling, lenstronomy is able to recover accurately the metallicity gradients of galaxies, even when the PSF is comparable to the size of a galaxy, as long as the data is observed with a sufficient number of pixels. Additionally, we demonstrate how lenstronomy is able to fit irregular metallicity profiles to galaxies that are not well-described by a simple surface brightness profile. This opens up pathways for detailed investigations into the connections between morphology and chemical structure for galaxies at cosmological distances using the transformative capabilities of JWST. Our code is publicly available and open source, and can also be used to model spatial distributions of other galaxy properties that are traced by its surface brightness profile
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克服 PSF 遮挡并根据星系化学结构拟合灵活模型的前向建模方法
https://github.com/astrobenji/lenstronomy-metals-notebooks 从历史上看,星系的金属性剖面是用一个径向对称的双参数线性模型来模拟的,该模型显示大多数星系的中心区域比外围区域富含更多的金属。然而,众所周知,当望远镜的点扩散函数(PSF)较大时,这一模型得出的结果并不准确。此外,径向对称模型无法捕捉星系内部的非对称结构。在这项工作中,我们对流行的正演建模 python 软件包 lenstronomy 进行了扩展,使用户能够克服这两个障碍。我们通过两个模拟数据的例子来展示这个代码库的新功能。首先,我们展示了通过前向建模,lenstronomy 能够准确地恢复星系的金属性梯度,即使 PSF 与星系的大小相当,只要观测数据有足够多的像素。此外,我们还展示了拉长光谱学是如何将不规则的金属性剖面拟合到星系上的,而简单的表面亮度剖面并不能很好地描述这些星系。这为利用 JWST 的变革能力详细研究宇宙学距离上星系的形态和化学结构之间的联系开辟了道路。我们的代码是公开的、开放源码的,也可以用来模拟由表面亮度轮廓追踪的其他星系属性的空间分布。
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