VolDen: A tool to extract number density from the column density of filamentary molecular clouds

IF 1.1 4区 物理与天体物理 Q3 ASTRONOMY & ASTROPHYSICS
A. K. Ashesh, Chakali Eswaraiah, P. Ujwal Reddy, Jia-wei Wang
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引用次数: 0

Abstract

Gas volume density is one of the critical parameters, along with dispersions in magnetic field position angles and non-thermal gas motions, for estimating the magnetic field strength using the Davis–Chandrasekhar–Fermi (DCF) relation or through its modified versions for a given region of interest. We present VolDen an novel python-based algorithm to extract the number density map from the column density map for an elongated interstellar filament. VolDen uses the workflow of RadFil to prepare the radial profiles across the spine. The user has to input the column density map and pre-computed spine along with the essential RadFil parameters (such as distance to the filament, the distance between two consecutive radial profile cuts, etc.) to extract the radial column density profiles. The thickness and volume density values are then calculated by modeling the column density profiles with a Plummer-like profile and introducing a cloud boundary condition. The cloud boundary condition was verified through an accompanying N-PDF column density analysis. In this paper, we discuss the workflow of VolDen and apply it to two filamentary clouds. We chose LDN1495 as our primary target owing to its nearby distance and elongated morphology. In addition, the distant filament RCW57A is selected as the secondary target to compare our results with the published results. Upon publication, a complete tutorial of VolDen and the codes will be available via https://github.com/aa16oaslak/volden.

从丝状分子云的柱密度中提取数字密度的工具
气体体积密度是利用Davis-Chandrasekhar-Fermi (DCF)关系或通过其修正版本对给定感兴趣区域估计磁场强度的关键参数之一,它与磁场位置角的色散和非热气体运动一起。提出了一种新的基于python的算法VolDen,用于从细长星际细丝的列密度图中提取数字密度图。VolDen使用RadFil的工作流程来准备脊柱的径向轮廓。用户必须输入柱密度图和预先计算的脊柱以及基本的RadFil参数(如到灯丝的距离,两个连续径向剖面切割之间的距离等)来提取径向柱密度剖面。然后,通过用Plummer-like剖面建模柱密度剖面并引入云边界条件,计算柱密度和体积密度值。通过随附的N-PDF柱密度分析验证了云边界条件。本文讨论了VolDen的工作流程,并将其应用于两个丝状云。我们选择LDN1495作为我们的主要目标,因为它的近距离和细长的形态。此外,我们选择远端细丝RCW57A作为次要目标,与已发表的结果进行对比。出版后,VolDen的完整教程和代码将通过https://github.com/aa16oaslak/volden提供。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Astrophysics and Astronomy
Journal of Astrophysics and Astronomy 地学天文-天文与天体物理
CiteScore
1.80
自引率
9.10%
发文量
84
审稿时长
>12 weeks
期刊介绍: The journal publishes original research papers on all aspects of astrophysics and astronomy, including instrumentation, laboratory astrophysics, and cosmology. Critical reviews of topical fields are also published. Articles submitted as letters will be considered.
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