IF 5.4 2区 物理与天体物理 Q1 ASTRONOMY & ASTROPHYSICS
V. Gustafsson, M. Brüggen, T. Enßlin
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引用次数: 0

摘要

背景法拉第旋转包含沿视线方向的磁场结构信息,是研究宇宙磁性的重要仪器。传统的法拉第频谱解卷积方法(如 RMCLEAN)在解析复杂的法拉第频散函数和处理大型数据集方面面临挑战。我们开发了一种深度学习解卷积模型,以提高从射电天文数据中提取法拉第旋转测量值的准确性和效率,特别是针对来自 MeerKAT 星系簇遗留巡天(MGCLS)的数据。我们采用了半监督学习方法,即模型同时再现数据并最小化合成数据输出与真实信号之间的差异。在星系团 Abell 3376 的模拟数据和真实数据上与 RMCLEAN 进行了性能比较。我们的半监督模型能够恢复扩展自转量(RM)成分的法拉第色散,同时考虑到带宽去极化,从而使 MGCLS 的光谱配置对高自转量信号具有更高的灵敏度。在对 Abell 3376 的观测中,我们发现了射电遗迹和几个活动星系核中的详细磁场结构。我们还将模型应用于MeerKAT的Abell 85、Abell 168、Abell 194、Abell 3186和Abell 3667数据。我们证明了深度学习在改进 RM 合成解卷积方面的潜力,它能以较高的计算效率提供精确的重建。除了根据现有偏振图验证我们的数据外,我们还在用 MeerKAT 拍摄的漫射光源中发现了新的精细特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-supervised rotation measure deconvolution and its application to MeerKAT observations of galaxy clusters
Context. Faraday rotation contains information about the magnetic field structure along the line of sight and is an important instrument in the study of cosmic magnetism. Traditional Faraday spectrum deconvolution methods such as RMCLEAN face challenges in resolving complex Faraday dispersion functions and handling large datasets.Aims. We developed a deep learning deconvolution model to enhance the accuracy and efficiency of extracting Faraday rotation measures from radio astronomical data, specifically targeting data from the MeerKAT Galaxy Cluster Legacy Survey (MGCLS).Methods. We used semi-supervised learning, where the model simultaneously recreates the data and minimizes the difference between the output and the true signal of synthetic data. Performance comparisons with RMCLEAN were conducted on simulated as well as real data for the galaxy cluster Abell 3376.Results. Our semi-supervised model is able to recover the Faraday dispersion for extended rotation measure (RM) components, while accounting for bandwidth depolarization, resulting in a higher sensitivity for high-RM signals, given the spectral configuration of MGCLS. Applied to observations of Abell 3376, we find detailed magnetic field structures in the radio relics, and several active galactic nuclei. We also applied our model to MeerKAT data of Abell 85, Abell 168, Abell 194, Abell 3186, and Abell 3667.Conclusions. We have demonstrated the potential of deep learning for improving RM synthesis deconvolution, providing accurate reconstructions at a high computational efficiency. In addition to validating our data against existing polarization maps, we find new and refined features in diffuse sources imaged with MeerKAT.
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来源期刊
Astronomy & Astrophysics
Astronomy & Astrophysics 地学天文-天文与天体物理
CiteScore
10.20
自引率
27.70%
发文量
2105
审稿时长
1-2 weeks
期刊介绍: Astronomy & Astrophysics is an international Journal that publishes papers on all aspects of astronomy and astrophysics (theoretical, observational, and instrumental) independently of the techniques used to obtain the results.
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