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Regional CO 2 inversions with LUMIA, the Lund University Modular Inversion Algorithm, v1.0

机译:区域二氧化碳2与Lumia,隆德大学模块化反演算法,V1.0

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Atmospheric inversions are used to derive constraints on the net sources and sinks of CO 2 and other stable atmospheric tracers from their observed concentrations. The resolution and accuracy that the fluxes can be estimated with depends, among other factors, on the quality and density of the observational coverage, on the precision and accuracy of the transport model used by the inversion to relate fluxes to observations, and on the adaptation of the statistical approach to the problem studied. In recent years, there has been an increasing demand from stakeholders for inversions at higher spatial resolution (country scale), in particular in the framework of the Paris agreement. This step up in resolution is in theory enabled by the growing availability of observations from surface in situ networks (such as ICOS in Europe) and from remote sensing products (OCO-2, GOSAT-2). The increase in the resolution of inversions is also a necessary step to provide efficient feedback to the bottom-up modeling community (vegetation models, fossil fuel emission inventories, etc.). However, it calls for new developments in the inverse models: diversification of the inversion approaches, shift from global to regional inversions, and improvement in the computational efficiency. In this context, we developed LUMIA, the Lund University Modular Inversion Algorithm. LUMIA is a Python library for inverse modeling built around the central idea of modularity: it aims to be a platform that enables users to construct and experiment with new inverse modeling setups while remaining easy to use and maintain. It is in particular designed to be transport-model-agnostic, which should facilitate isolating the transport model errors from those introduced by the inversion setup itself. We have constructed a first regional inversion setup using the LUMIA framework to conduct regional CO 2 inversions in Europe using in situ data from surface and tall-tower observation sites. The inversions rely on a new offline coupling between the regional high-resolution FLEXPART Lagrangian particle dispersion model and the global coarse-resolution TM5 transport model. This test setup is intended both as a demonstration and as a reference for comparison with future LUMIA developments. The aims of this paper are to present the LUMIA framework (motivations for building it, development principles and future prospects) and to describe and test this first implementation of regional CO 2 inversions in LUMIA.
机译:大气逆转用于从其观察到的浓度导出CO 2和其他稳定的大气示踪剂的净源和水槽的约束。可以估计通量的分辨率和准确性在其他因素上,在观察覆盖的质量和密度上,对转换使用助势的传输模型的精度和准确性以及对观察的精度和准确性,以及适应性研究了问题的统计方法。近年来,利益相关者在更高的空间分辨率(国家规模)中的反转日益增长的需求,特别是在巴黎协定的框架中。该分辨率的加紧是理论上,通过越来越多的地表的观察能力(如欧洲ICOS)和遥感产品(OCO-2,GOSAT-2)的观察结果而越来越多的观察。反相的分辨率的增加也是为自下而上建模社区提供有效反馈的必要步骤(植被模型,化石燃料发射库存等)。但是,它要求反向模型中的新发展:反转方法的多样化,从全局转向区域逆转,以及计算效率的改进。在这种情况下,我们开发了Lumia,隆德大学模块化反演算法。 Lumia是一个围绕模块化核心思想构建的逆建模的Python库:它旨在成为一个平台,使用户能够构建和实验新的反转建模设置,同时仍然易于使用和维护。特别是旨在成为运输模型不可知的设计,这应该有助于将传输模型误差与反转设置本身引入的那些隔离。我们建立了使用Lumia框架的第一个区域反转设置,以便使用来自表面和高塔观察网站的原位数据在欧洲进行区域二氧化碳副作。该反转依赖于区域高分辨率灵活拉格朗日粒子分散模型与全局粗辨率TM5传输模型之间的新的离线耦合。该测试设置既涉及演示,也是与未来Lumia发展相比的参考。本文的目的是展示Lumia框架(建立它,发展原则和未来前景的动机),并描述和测试Lumia中的第一次实施区域二氧化碳副作用。

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