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Neural Network Constraints on the Cosmic-Ray Ionization Rate and Other Physical Conditions in NGC 253 with ALCHEMI Measurements of HCN and HNC

ASTROPHYSICAL JOURNAL(2024)

Univ Virginia

Cited 0|Views7
Abstract
We use a neural network model and Atacama Large Millimeter/submillimeter Array (ALMA) observations of HCN and HNC to constrain the physical conditions, most notably the cosmic-ray ionization rate (CRIR, zeta), in the Central Molecular Zone (CMZ) of the starburst galaxy NGC 253. Using output from the chemical code UCLCHEM, we train a neural network model to emulate UCLCHEM and derive HCN and HNC molecular abundances from a given set of physical conditions. We combine the neural network with radiative transfer modeling to generate modeled integrated intensities, which we compare to measurements of HCN and HNC from the ALMA Large Program ALCHEMI. Using a Bayesian nested sampling framework, we constrain the CRIR, molecular gas volume and column densities, kinetic temperature, and beam-filling factor across NGC 253's CMZ. The neural network model successfully recovers UCLCHEM molecular abundances with similar to 3% error and, when used with our Bayesian inference algorithm, increases the parameter-inference speed tenfold. We create images of these physical parameters across NGC 253's CMZ at 50 pc resolution and find that the CRIR, in addition to the other gas parameters, is spatially variable with zeta similar to a few x10(-14) s(-1) at r greater than or similar to 100 pc from the nucleus, increasing to zeta > 10(-13) s(-1) at its center. These inferred CRIRs are consistent within 1 dex with theoretical predictions based on nonthermal emission. Additionally, the high CRIRs estimated in NGC 253's CMZ can be explained by the large number of cosmic-ray-producing sources as well as a potential suppression of cosmic-ray diffusion near their injection sites.
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Cosmic ray astronomy,Interstellar medium,Molecular gas,Neural networks,Starburst galaxies,Star forming regions
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要点】:本文使用神经网络模型和ALMA观测数据,通过HCN和HNC分子丰度的模拟,约束了NGC 253中央分子区(CMZ)的物理条件,特别是宇宙射线电离率(CRIR)。

方法】:通过训练神经网络模型模拟化学代码UCLCHEM的输出,结合辐射传输模型,生成模型积分强度,并与ALMA ALCHEMI观测数据进行比较。

实验】:在ALMA ALCHEMI观测数据的基础上,使用贝叶斯嵌套抽样框架,成功约束了NGC 253 CMZ的CRIR、分子气体体积和柱密度、动能温度以及束填充因子,结果显示CRIR在CMZ内空间上变化,与理论预测一致。