论文标题
光谱线成分的概率检测
Probabilistic detection of spectral line components
论文作者
论文摘要
已解决的运动信息,例如来自恒星形成区域中的分子气体,是从光谱线观测中获得的。但是,这些观察结果通常包含多个视线组件,从而使估计更难获得和解释。我们提出了一种全自动方法,该方法通过贝叶斯模型选择确定沿视线或光谱多重性的组件数量。基于嵌套采样和常规光谱线建模的基础开源框架使用NGC 1333的大面积氨图在由绿色银行氨调查(GAS)获得的珀尔修斯分子云中测试。与经典方法相比,所提出的方法限制了较大区域中的速度和速度分散体。此外,我们发现多个组件之间的速度分布分布与气体数据的单个拟合成分分析没有很大变化。这些结果介绍了拟合和模型选择方法的功率和相对易度性,这使其成为从复杂的光谱数据中提取最大信息的独特工具。
Resolved kinematical information, such as from molecular gas in star forming regions, is obtained from spectral line observations. However, these observations often contain multiple line-of-sight components, making estimates harder to obtain and interpret. We present a fully automatic method that determines the number of components along the line of sight, or the spectral multiplicity, through Bayesian model selection. The underlying open-source framework, based on nested sampling and conventional spectral line modeling, is tested using the large area ammonia maps of NGC 1333 in Perseus molecular cloud obtained by the Green Bank Ammonia Survey (GAS). Compared to classic approaches, the presented method constrains velocities and velocity dispersions in a larger area. In addition, we find that the velocity dispersion distribution among multiple components did not change substantially from that of a single fit component analysis of the GAS data. These results showcase the power and relative ease of the fitting and model selection method, which makes it a unique tool to extract maximum information from complex spectral data.