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Assimilating solar-induced chlorophyll fluorescence into the terrestrial biosphere model BETHY-SCOPE v1.0: model description and information content

机译:将太阳能诱导的叶绿素荧光分析到陆地生物圈模型中弯曲范围V1.0:模型描述和信息内容

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The synthesis of model and observational information using data assimilation can improve our understanding of the terrestrial carbon cycle, a key component of the Earth's climate–carbon system. Here we provide a data assimilation framework for combining observations of solar-induced chlorophyll fluorescence (SIF) and a process-based model to improve estimates of terrestrial carbon uptake or gross primary production (GPP). We then quantify and assess the constraint SIF provides on the uncertainty in global GPP through model process parameters in an error propagation study. By incorporating 1 year of SIF observations from the GOSAT satellite, we find that the parametric uncertainty in global annual GPP is reduced by 73% from ±19.0 to ±5.2Pg?C?yr?1. This improvement is achieved through strong constraint of leaf growth processes and weak to moderate constraint of physiological parameters. We also find that the inclusion of uncertainty in shortwave down-radiation forcing has a net-zero effect on uncertainty in GPP when incorporated into the SIF assimilation framework. This study demonstrates the powerful capacity of SIF to reduce uncertainties in process-based model estimates of GPP and the potential for improving our predictive capability of this uncertain carbon flux.
机译:使用数据同化的模型和观测信息的合成可以改善我们对地面碳循环的理解,是地球气候碳系统的关键组成部分。在这里,我们提供了一种用于结合太阳能诱导的叶绿素荧光(SIF)和基于过程的模型的数据同化框架,以改善陆地碳吸收或总初级生产(GPP)的估计。然后,我们通过在错误传播研究中通过模型过程参数来量化和评估约束SIF在全局GPP中提供的不确定性。通过从Gosat卫星中纳入1年的SIF观察,我们发现全球年度GPP的参数不确定性从±19.0到±5.2pg±5.2pg?c?1。通过强大的叶生长过程和弱到生理参数的中等约束来实现这种改进。我们还发现,当结合到SIF同化框架中,将不确定性纳入短波下降辐射强制对GPP的不确定性的净零效应。本研究表明了SIF的强大容量,以减少基于GPP的基于过程的模型估计的不确定性以及提高这种不确定碳通量的预测能力的可能性。

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