利用机器学习和数据同化同时推断海冰状态和地表发射率模型

IF 4.4 2区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES
Alan J. Geer
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引用次数: 0

摘要

卫星微波辐射观测对海冰非常敏感,但对海冰和雪的辐射传递的物理描述并不完整。此外,辐射传递受控于鲜为人知的微观结构特性,这些特性在时间和空间上差异很大。因此,在海冰区域没有同化对地表敏感的微波观测数据,海冰检索使用的是启发式方法而不是物理方法。海冰辐射传递的经验模型会有所帮助,但无法使用标准的机器学习技术对其进行训练,因为输入大多是未知的。解决办法是同时训练经验模型和一组经验输入:"经验状态 "方法,它借鉴了生成式机器学习和物理数据同化方法。一个混合物理-经验网络描述了海冰和大气辐射传输的已知和未知物理现象。然后,利用天气预报系统提供的大气剖面、表皮温度和海水辐射率,对该网络进行训练,以拟合高级微波扫描辐射计 2 的一年辐射观测数据。这一过程在估算每日海冰浓度图的同时,也学习了海冰辐射率的经验模型。该模型学习如何定义自己的经验输入空间以及这些经验输入的每日地图。这些地图代表了影响辐射传递的海冰和雪的未知微观结构特性。这种 "经验状态 "方法可用于解决地球系统数据同化的许多其他问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Simultaneous Inference of Sea Ice State and Surface Emissivity Model Using Machine Learning and Data Assimilation

Simultaneous Inference of Sea Ice State and Surface Emissivity Model Using Machine Learning and Data Assimilation

Satellite microwave radiance observations are strongly sensitive to sea ice, but physical descriptions of the radiative transfer of sea ice and snow are incomplete. Further, the radiative transfer is controlled by poorly-known microstructural properties that vary strongly in time and space. A consequence is that surface-sensitive microwave observations are not assimilated over sea ice areas, and sea ice retrievals use heuristic rather than physical methods. An empirical model for sea ice radiative transfer would be helpful but it cannot be trained using standard machine learning techniques because the inputs are mostly unknown. The solution is to simultaneously train the empirical model and a set of empirical inputs: an “empirical state” method, which draws on both generative machine learning and physical data assimilation methodology. A hybrid physical-empirical network describes the known and unknown physics of sea ice and atmospheric radiative transfer. The network is then trained to fit a year of radiance observations from Advanced Microwave Scanning Radiometer 2, using the atmospheric profiles, skin temperature and ocean water emissivity taken from a weather forecasting system. This process estimates maps of the daily sea ice concentration while also learning an empirical model for the sea ice emissivity. The model learns to define its own empirical input space along with daily maps of these empirical inputs. These maps represent the otherwise unknown microstructural properties of the sea ice and snow that affect the radiative transfer. This “empirical state” approach could be used to solve many other problems of earth system data assimilation.

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来源期刊
Journal of Advances in Modeling Earth Systems
Journal of Advances in Modeling Earth Systems METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
11.40
自引率
11.80%
发文量
241
审稿时长
>12 weeks
期刊介绍: The Journal of Advances in Modeling Earth Systems (JAMES) is committed to advancing the science of Earth systems modeling by offering high-quality scientific research through online availability and open access licensing. JAMES invites authors and readers from the international Earth systems modeling community. Open access. Articles are available free of charge for everyone with Internet access to view and download. Formal peer review. Supplemental material, such as code samples, images, and visualizations, is published at no additional charge. No additional charge for color figures. Modest page charges to cover production costs. Articles published in high-quality full text PDF, HTML, and XML. Internal and external reference linking, DOI registration, and forward linking via CrossRef.
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