F. Guglielmetti, Michele Delli Veneri, I. Baronchelli, Carmen Blanco, Andrea Dosi, T. Enßlin, Vishal Johnson, Giuseppe Longo, Jakob Roth, Felix Stoehr, Ł. Tychoniec, Eric Villard
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引用次数: 0
摘要
欧洲南方天文台内部的 ALMA 开发研究 BRAIN 正在利用天体统计学和天体信息学解决合成图像分析中的反问题。这些新兴的研究领域提供了观测天文学、统计学、算法开发和数据科学交叉的跨学科方法。在本研究中,我们将提供证据,证明将这些方法用于 ALMA 成像的操作和科学目的的好处。我们展示了应用于 ALMA 校准科学数据的 RESOLVE 和 DeepFocus 这两种技术的潜力。这两项技术具有显著优势,有望提高存储在科学档案中的数据产品的质量和完整性,并缩短运行的总体处理时间。这两种方法都是应对计划中的电子升级所带来的数据速率革命的合理途径。此外,我们还通过一个新的软件包 ALMASim 为社区带来了更多产品,以促进这些领域的进步,并提供一个经过改进的 ALMA 模拟器,供广大社区用于培训和/或测试新算法。
A BRAIN Study to Tackle Image Analysis with Artificial Intelligence in the ALMA 2030 Era
An ESO internal ALMA development study, BRAIN, is addressing the ill-posed inverse problem of synthesis image analysis employing astrostatistics and astroinformatics. These emerging fields of research offer interdisciplinary approaches at the intersection of observational astronomy, statistics, algorithm development, and data science. In this study, we provide evidence of the benefits of employing these approaches to ALMA imaging for operational and scientific purposes. We show the potential of two techniques, RESOLVE and DeepFocus, applied to ALMA calibrated science data. Significant advantages are provided with the prospect to improve the quality and completeness of the data products stored in the science archive and overall processing time for operations. Both approaches evidence the logical pathway to address the incoming revolution in data rates dictated by the planned electronic upgrades. Moreover, we bring to the community additional products through a new package, ALMASim, to promote advancements in these fields, providing a refined ALMA simulator usable by a large community for training and/or testing new algorithms.