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A biogenic CO2 flux adjustment scheme for the mitigation of large-scale biases in global atmospheric CO2 analyses and forecasts

机译:全球大气二氧化碳二氧化碳二氧化碳二氧化碳分析和预测中大规模偏差减缓的生物二氧化碳磁通调整方案

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Forecasting atmospheric CO2 daily at the global scale with a good accuracy like it is done for the weather is a challenging task. However, it is also one of the key areas of development to bridge the gaps between weather, air quality and climate models. The challenge stems from the fact that atmospheric CO2 is largely controlled by the CO2 fluxes at the surface, which are difficult to constrain with observations. In particular, the biogenic fluxes simulated by land surface models show skill in detecting synoptic and regional-scale disturbances up to sub-seasonal time-scales, but they are subject to large seasonal and annual budget errors at global scale, usually requiring a posteriori adjustment. This paper presents a scheme to diagnose and mitigate model errors associated with biogenic fluxes within an atmospheric CO2 forecasting system. The scheme is an adaptive scaling procedure referred to as a biogenic flux adjustment scheme (BFAS), and it can be applied automatically in real time throughout the forecast. The BFAS method generally improves the continental budget of CO2 fluxes in the model by combining information from three sources: (1) retrospective fluxes estimated by a global flux inversion system, (2) land-use information, (3) simulated fluxes from the model. The method is shown to produce enhanced skill in the daily CO2 10-day forecasts without requiring continuous manual intervention. Therefore, it is particularly suitable for near-real-time CO2 analysis and forecasting systems.
机译:每天在全球范围内每天预测大气二氧化碳,这是一个良好的准确性,因为它是一个具有挑战性的任务。然而,它也是弥合天气,空气质量和气候模型之间的差距的关键发展领域之一。挑战源于大气CO2大部分由表面上的CO 2通量控制的事实,这难以在观察结果中约束。特别地,由陆地表面模型模拟的生物助熔剂展示了检测到季季节性时间尺度的舞台和区域规模扰动的技能,但它们受到全球规模的大量季节性和年度预算错误,通常需要后验调整。本文提出了一种诊断和减轻与大气CO2预测系统内生物助熔剂相关的模型误差的方案。该方案是称为生物通量调节方案(BFA)的自适应缩放过程,可以在整个预测中实时自动应用。 BFAS方法通常通过组合三种来源的信息来改善模型中的CO2通量的大陆预算:(1)通过全局助焊剂反转系统估计的回顾通量,(2)LINUS使用信息,(3)模拟模型的模拟助焊剂。该方法显示在每日CO2 10日预报中产生增强的技术,而无需持续进行手动干预。因此,它特别适用于近实时CO2分析和预测系统。

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