论文标题
通过神经网络发现CA II吸收系
Discovering Ca II Absorption Lines With a Neural Network
论文作者
论文摘要
类星体吸收线分析对于研究气体和粉尘成分及其物理和化学特性以及早期宇宙中星系的演化和形成至关重要。 Ca II吸收剂是最具尘土的吸收剂之一,比大多数其他吸收剂都位于红移较低的地方,在研究最近的星系中的物理过程和条件时特别有价值。但是,由于难以通过传统方法检测到它们的困难,因此已知的类星体CA II吸收剂的数量相对较低。在这项工作中,我们开发了一种准确,快速的方法来使用深度学习来搜索CA II吸收系。在我们的深度学习模型中,使用模拟数据调整的卷积神经网络用于分类任务。模拟训练数据是通过将人工CA II吸收系插入Sloan Digital Sky Survey(SDSS)的原始类星体光谱中生成的,而将现有的CA II目录作为测试集采用。最终的模型在测试集中的实际数据上达到了96%的精度。我们的解决方案的运行速度比传统方法快数千倍,花了几秒钟来分析数千种类星体,而传统方法可能需要几天到几周。训练有素的神经网络适用于SDSS的DR7和DR12的类星体光谱,并发现了399个新的类星体CA II吸收剂。此外,我们确认了其他研究小组先前通过传统方法鉴定出的409个已知的类星体CA II吸收剂。
Quasar absorption line analysis is critical for studying gas and dust components and their physical and chemical properties as well as the evolution and formation of galaxies in the early universe. Ca II absorbers, which are one of the dustiest absorbers and are located at lower redshifts than most other absorbers, are especially valuable when studying physical processes and conditions in recent galaxies. However, the number of known quasar Ca II absorbers is relatively low due to the difficulty of detecting them with traditional methods. In this work, we developed an accurate and quick approach to search for Ca II absorption lines using deep learning. In our deep learning model, a convolutional neural network, tuned using simulated data, is used for the classification task. The simulated training data are generated by inserting artificial Ca II absorption lines into original quasar spectra from the Sloan Digital Sky Survey (SDSS) whilst an existing Ca II catalog is adopted as the test set. The resulting model achieves an accuracy of 96% on the real data in the test set. Our solution runs thousands of times faster than traditional methods, taking a fraction of a second to analyze thousands of quasars while traditional methods may take days to weeks. The trained neural network is applied to quasar spectra from SDSS's DR7 and DR12 and discovered 399 new quasar Ca II absorbers. In addition, we confirmed 409 known quasar Ca II absorbers identified previously by other research groups through traditional methods.