ESA-Ariel Data Challenge NeurIPS 2022: Introduction to exo-atmospheric studies and presentation of the Atmospheric Big Challenge (ABC) Database

Q. Changeat, K. H. Yip
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引用次数: 3

Abstract

This is an exciting era for exo-planetary exploration. The recently launched JWST, and other upcoming space missions such as Ariel, Twinkle and ELTs are set to bring fresh insights to the convoluted processes of planetary formation and evolution and its connections to atmospheric compositions. However, with new opportunities come new challenges. The field of exoplanet atmospheres is already struggling with the incoming volume and quality of data, and machine learning (ML) techniques lands itself as a promising alternative. Developing techniques of this kind is an inter-disciplinary task, one that requires domain knowledge of the field, access to relevant tools and expert insights on the capability and limitations of current ML models. These stringent requirements have so far limited the developments of ML in the field to a few isolated initiatives. In this paper, We present the Atmospheric Big Challenge Database (ABC Database), a carefully designed, organised and publicly available database dedicated to the study of the inverse problem in the context of exoplanetary studies. We have generated 105,887 forward models and 26,109 complementary posterior distributions generated with Nested Sampling algorithm. Alongside with the database, this paper provides a jargon-free introduction to non-field experts interested to dive into the intricacy of atmospheric studies. This database forms the basis for a multitude of research directions, including, but not limited to, developing rapid inference techniques, benchmarking model performance and mitigating data drifts. A successful application of this database is demonstrated in the NeurIPS Ariel ML Data Challenge 2022.
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ESA-Ariel数据挑战NeurIPS 2022:介绍大气外研究和大气大挑战(ABC)数据库的介绍
这是一个令人兴奋的外行星探索时代。最近发射的JWST,以及其他即将到来的太空任务,如Ariel, Twinkle和elt,将为行星形成和演化的复杂过程及其与大气成分的联系带来新的见解。然而,新的机遇也带来了新的挑战。系外行星大气领域已经在努力应对传入的数据量和质量,机器学习(ML)技术成为一个有前途的替代方案。开发这种技术是一项跨学科的任务,需要该领域的领域知识,获得相关工具和专家对当前ML模型的能力和局限性的见解。到目前为止,这些严格的要求将ML在该领域的发展限制在一些孤立的计划中。在本文中,我们介绍了大气大挑战数据库(ABC数据库),这是一个精心设计,组织和公开可用的数据库,致力于研究系外行星研究背景下的逆问题。我们已经用嵌套采样算法生成了105,887个正向模型和26,109个互补后验分布。除了数据库之外,本文还为有兴趣深入研究大气研究的复杂性的非领域专家提供了一个无术语的介绍。该数据库构成了众多研究方向的基础,包括但不限于开发快速推理技术、对模型性能进行基准测试和减轻数据漂移。在NeurIPS Ariel ML数据挑战赛2022中展示了该数据库的成功应用。
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