Reconstructions and predictions of the global carbon budget with an emission-driven Earth system model

Hongmei Li, Tatiana Ilyina, Tammas Loughran, Aaron Spring, Julia Pongratz
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Abstract

Abstract. The global carbon budget (GCB) – including fluxes of CO2 between the atmosphere, land, and ocean and its atmospheric growth rate – show large interannual to decadal variations. Reconstructing and predicting the variable GCB is essential for tracing the fate of carbon and understanding the global carbon cycle in a changing climate. We use a novel approach to reconstruct and predict the variations in GCB in the next few years based on our decadal prediction system enhanced with an interactive carbon cycle. By assimilating physical atmospheric and oceanic data products into the Max Planck Institute Earth System Model (MPI-ESM), we are able to reproduce the annual mean historical GCB variations from 1970–2018, with high correlations of 0.75, 0.75, and 0.97 for atmospheric CO2 growth, air–land CO2 fluxes, and air–sea CO2 fluxes, respectively, relative to the assessments from the Global Carbon Project (GCP). Such a fully coupled decadal prediction system, with an interactive carbon cycle, enables the representation of the GCB within a closed Earth system and therefore provides an additional line of evidence for the ongoing assessments of the anthropogenic GCB. Retrospective predictions initialized from the simulation in which physical atmospheric and oceanic data products are assimilated show high confidence in predicting the following year's GCB. The predictive skill is up to 5 years for the air–sea CO2 fluxes, and 2 years for the air–land CO2 fluxes and atmospheric carbon growth rate. This is the first study investigating the GCB variations and predictions with an emission-driven prediction system. Such a system also enables the reconstruction of the past and prediction of the evolution of near-future atmospheric CO2 concentration changes. The Earth system predictions in this study provide valuable inputs for understanding the global carbon cycle and informing climate-relevant policy.
用排放驱动的地球系统模型重建和预测全球碳收支
摘要全球碳收支(GCB)——包括大气、陆地和海洋之间的二氧化碳通量及其大气增长率——显示出较大的年际至年代际变化。重建和预测可变GCB对于追踪碳的命运和了解气候变化中的全球碳循环至关重要。我们采用了一种新的方法来重建和预测未来几年GCB的变化,该方法基于我们的年代际预测系统增强了相互作用的碳循环。通过将大气和海洋物理数据产品吸收到马克斯普朗克研究所地球系统模式(MPI-ESM)中,我们能够再现1970-2018年的年平均历史GCB变化,相对于全球碳项目(GCP)的评估,大气CO2增长、空气-陆地CO2通量和空气-海洋CO2通量的相关性分别为0.75、0.75和0.97。这样一个具有相互作用碳循环的完全耦合的年代际预测系统,能够在封闭的地球系统内表示温室气体排放量,因此为正在进行的对人为温室气体排放量的评估提供了额外的证据。从吸收大气和海洋物理数据产品的模拟中初始化的回顾性预测显示,对预测下一年的GCB具有很高的可信度。海气CO2通量的预测能力可达5年,陆气CO2通量和大气碳增长率的预测能力可达2年。这是第一个利用排放驱动的预测系统调查温室气体排放量变化和预测的研究。这样的系统还可以重建过去和预测近将来大气CO2浓度变化的演变。本研究中的地球系统预测为理解全球碳循环和告知气候相关政策提供了有价值的输入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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