EAT v1.0.0: a 1D test bed for physical–biogeochemical data assimilation in natural waters

Jorn Bruggeman, K. Bolding, Lars Nerger, A. Teruzzi, Simone Spada, J. Skákala, S. Ciavatta
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Abstract

Abstract. Data assimilation (DA) in marine and freshwater systems combines numerical models and observations to deliver the best possible characterization of a waterbody's physical and biogeochemical state. DA underpins the widely used 3D ocean state reanalyses and forecasts produced operationally by, e.g., the Copernicus Marine Service. The use of DA in natural waters is an active field of research, but testing new developments in realistic setting can be challenging as operational DA systems are demanding in terms of computational resources and technical skill. There is a need for test beds that are sufficiently realistic but also efficient to run and easy to operate. Here, we present the Ensemble and Assimilation Tool (EAT), a flexible and extensible software package that enables data assimilation of physical and biogeochemical variables in a one-dimensional water column. EAT builds on established open-source components for hydrodynamics (GOTM), biogeochemistry (FABM), and data assimilation (PDAF). It is easy to install and operate and is flexible through support for user-written plugins. EAT is well suited to explore and advance the state of the art in DA in natural waters thanks to its support for (1) strongly and weakly coupled data assimilation, (2) observations describing any prognostic and diagnostic element of the physical–biogeochemical model, and (3) the estimation of biogeochemical parameters. Its range of capabilities is demonstrated with three applications: ensemble-based coupled physical–biogeochemical assimilation, the use of variational methods (3D-Var) to assimilate sea surface chlorophyll, and the estimation of biogeochemical parameters.
EAT v1.0.0:自然水体物理-生物地球化学数据同化的一维测试平台
摘要。海洋和淡水系统中的数据同化(DA)结合了数值模式和观测数据,以提供水体物理和生物地球化学状态的最佳特征。数据同化是广泛使用的三维海洋状态再分析和哥白尼海洋服务等机构的业务预报的基础。在自然水域中使用三维海洋状态分析是一个活跃的研究领域,但在现实环境中测试新的开发成果可能具有挑战性,因为业务三维海洋状态分析系统对计算资源和技术技能的要求很高。我们需要既足够逼真,又能高效运行、易于操作的测试平台。在此,我们介绍了集合与同化工具(EAT),这是一个灵活、可扩展的软件包,可对一维水体中的物理和生物地球化学变量进行数据同化。EAT 建立在已有的流体力学(GOTM)、生物地球化学(FABM)和数据同化(PDAF)开源组件的基础上。它易于安装和操作,并通过支持用户编写的插件而具有灵活性。EAT 支持(1)强耦合和弱耦合数据同化,(2)描述物理-生物地球化学模型的任何预报和诊断要素的观测数据,以及(3)生物地球化学参数的估算,因此非常适合探索和推进自然水域中的数据分析技术。它的能力范围通过三个应用得到了证明:基于集合的物理-生物地球化学耦合同化、使用变异方法(3D-Var)同化海面叶绿素以及估算生物地球化学参数。
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