论文标题
卷积神经网络的应用以识别CO发射中的原恒星流出
Application of Convolutional Neural Networks to Identify Protostellar Outflows in CO Emission
论文作者
论文摘要
我们采用深度学习方法CASI-3D(结构识别3D卷积方法),以识别分子线光谱中的原恒星流出。我们进行了磁性融化动力学模拟,以模拟形成恒星的恒星,这些恒星发射原始的流出,并使用它们来产生合成观测。我们将3D辐射传输代码RADMC-3D应用于模拟云的模型12CO(J = 1-0)线发射。我们训练了两种CASI-3D模型:ME1经过训练以仅预测流出的位置,而MF进行了训练以预测每个体素中流出的质量的一部分。这两个模型成功地识别了Perseus中所有60个先前视觉上识别出的流出。此外,CASI-3D找到了20个新的高信心流出。所有这些都具有连贯的高速结构,其中17个具有附近的年轻恒星物体,而其余的三个物体在Spitzer的调查范围之外。 MF预测的珀尔修斯中各个流出的质量,动量和能量与先前的估计相当。这种相似性是由于错误的取消:先前的计算错过了与云速度相当的速度的流出材料,但是,它们通过高估较高速度的质量量来弥补这一点,从而受到非流量气体污染的质量。与年轻来源相比,我们显示出可能由较旧来源驱动的流出具有更高的高速气体。
We adopt the deep learning method CASI-3D (Convolutional Approach to Structure Identification-3D) to identify protostellar outflows in molecular line spectra. We conduct magneto-hydrodynamics simulations that model forming stars that launch protostellar outflows and use these to generate synthetic observations. We apply the 3D radiation transfer code RADMC-3D to model 12CO (J=1-0) line emission from the simulated clouds. We train two CASI-3D models: ME1 is trained to predict only the position of outflows, while MF is trained to predict the fraction of the mass coming from outflows in each voxel. The two models successfully identify all 60 previously visually identified outflows in Perseus. Additionally, CASI-3D finds 20 new high-confidence outflows. All of these have coherent high-velocity structures, and 17 of them have nearby young stellar objects, while the remaining three are outside the Spitzer survey coverage. The mass, momentum and energy of individual outflows in Perseus predicted by model MF is comparable to the previous estimations. This similarity is due to a cancelation in errors: previous calculations missed outflow material with velocities comparable to the cloud velocity, however, they compensate for this by over-estimating the amount of mass at higher velocities that has contamination from non-outflow gas. We show outflows likely driven by older sources have more high-velocity gas compared to those driven by younger sources.