论文标题
对线强度映射观察的深度学习:从嘈杂地图中提取信息
Deep Learning for Line Intensity Mapping Observations: Information Extraction from Noisy Maps
论文作者
论文摘要
线强度映射(LIM)是一种有前途的观察方法,用于探测遥远星系线发射的大规模波动。来自广场LIM观察结果的数据使我们能够研究宇宙的大规模结构以及星系群体及其进化。 LIM的一个严重问题是前景/背景源和各种噪声贡献的污染。我们开发有条件的生成对抗网络(CGAN),这些网络从嘈杂地图中提取指定的信号和信息。我们使用30,000个模拟观察图训练CGAN,并假设高斯噪声与NASA Spherex Mission的预期噪声水平相匹配。受过训练的CGAN成功地从观察到的,嘈杂的强度图的目标红移中成功地从星系中重建了Hα发射。高度大于3.5σ噪声的强度峰位于60%的精度。即使在以噪声为主导的状态下,也可以准确恢复单点概率分布和功率谱。但是,总体重建性能取决于像素的大小和训练数据所假定的调查量。为了在大角度尺度上重建强度功率谱,必须生成具有足够大容量的训练模拟数据。我们的深入学习方法可以很容易地应用于线混乱和噪音的观察数据。
Line intensity mapping (LIM) is a promising observational method to probe large-scale fluctuations of line emission from distant galaxies. Data from wide-field LIM observations allow us to study the large-scale structure of the universe as well as galaxy populations and their evolution. A serious problem with LIM is contamination by foreground/background sources and various noise contributions. We develop conditional generative adversarial networks (cGANs) that extract designated signals and information from noisy maps. We train the cGANs using 30,000 mock observation maps with assuming a Gaussian noise matched to the expected noise level of NASA's SPHEREx mission. The trained cGANs successfully reconstruct Hα emission from galaxies at a target redshift from observed, noisy intensity maps. Intensity peaks with heights greater than 3.5 σ noise are located with 60 % precision. The one-point probability distribution and the power spectrum are accurately recovered even in the noise-dominated regime. However, the overall reconstruction performance depends on the pixel size and on the survey volume assumed for the training data. It is necessary to generate training mock data with a sufficiently large volume in order to reconstruct the intensity power spectrum at large angular scales. Our deep-learning approach can be readily applied to observational data with line confusion and with noise.