Trivial improvements of predictive skill due to direct reconstruction of global carbon cycle

A. Spring, I. Dunkl, Hongmei Li, V. Brovkin, T. Ilyina
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引用次数: 3

Abstract

Abstract. State-of-the-art carbon cycle prediction systems are initialized from reconstruction simulations in which state variables of the climate system are assimilated. While currently only the physical state variables are assimilated, biogeochemical state variables adjust to the state acquired through this assimilation indirectly instead of being assimilated themselves. In the absence of comprehensive biogeochemical reanalysis products, such approach is pragmatic. Here we evaluate a potential advantage of having perfect carbon cycle observational products to be used for direct carbon cycle reconstruction. Within an idealized perfect-model framework, we define 50 years of a control simulation under pre-industrial CO2 levels as our target representing observations. We nudge variables from this target onto arbitrary initial conditions 150 years later mimicking an assimilation simulation generating initial conditions for hindcast experiments of prediction systems. We investigate the tracking performance, i.e. bias, correlation and root-mean-square-error between the reconstruction and the target, when nudging an increasing set of atmospheric, oceanic and terrestrial variables with a focus on the global carbon cycle explaining variations in atmospheric CO2. We compare indirect versus direct carbon cycle reconstruction against a resampled threshold representing internal variability. Afterwards, we use these reconstructions to initialize ensembles to assess how well the target can be predicted after reconstruction. Interested in the ability to reconstruct global atmospheric CO2, we focus on the global carbon cycle reconstruction and predictive skill. We find that indirect carbon cycle reconstruction through physical fields reproduces the target variations on a global and regional scale much better than the resampled threshold. While reproducing the large scale variations, nudging introduces systematic regional biases in the physical state variables, on which biogeochemical cycles react very sensitively. Global annual surface oceanic pCO2 initial conditions are indirectly reconstructed with an anomaly correlation coefficient (ACC) of 0.8 and debiased root mean square error (RMSE) of 0.3 ppm. Direct reconstruction slightly improves initial conditions in ACC by +0.1 and debiased RMSE by −0.1 ppm. Indirect reconstruction of global terrestrial carbon cycle initial conditions for vegetation carbon pools track the target by ACC of 0.5 and debiased RMSE of 0.5 PgC. Direct reconstruction brings negligible improvements for air-land CO2 flux. Global atmospheric CO2 is indirectly tracked by ACC of 0.8 and debiased RMSE of 0.4 ppm. Direct reconstruction of the marine and terrestrial carbon cycles improves ACC by 0.1 and debiased RMSE by −0.1 ppm. We find improvements in global carbon cycle predictive skill from direct reconstruction compared to indirect reconstruction. After correcting for mean bias, indirect and direct reconstruction both predict the target similarly well and only moderately worse than perfect initialization after the first lead year. Our perfect-model study shows that indirect carbon cycle reconstruction yields satisfying initial conditions for global CO2 flux and atmospheric CO2. Direct carbon cycle reconstruction adds little improvements in the global carbon cycle, because imperfect reconstruction of the physical climate state impedes better biogeochemical reconstruction. These minor improvements in initial conditions yield little improvement in initialized perfect-model predictive skill. We label these minor improvements due to direct carbon cycle reconstruction trivial, as mean bias reduction yields similar improvements. As reconstruction biases in real-world prediction systems are even stronger, our results add confidence to the current practice of indirect reconstruction in carbon cycle prediction systems.
由于全球碳循环的直接重建,预测技能的微小改进
摘要最先进的碳循环预测系统是从同化气候系统状态变量的重建模拟中初始化的。虽然目前只有物理状态变量被同化,但生物地球化学状态变量通过这种同化间接地调整到所获得的状态,而不是自己被同化。在缺乏全面的生物地球化学再分析产品的情况下,这种方法是实用的。在这里,我们评估了拥有完美的碳循环观测产品用于直接碳循环重建的潜在优势。在理想的完美模型框架内,我们定义了工业化前二氧化碳水平下50年的控制模拟作为我们的目标,代表观测结果。我们将变量从这个目标推到150年后的任意初始条件,模拟同化模拟,为预测系统的后置实验生成初始条件。我们研究了跟踪性能,即偏差、相关性和重建与目标之间的均方根误差,当推动一组不断增加的大气、海洋和陆地变量时,重点是全球碳循环解释大气CO2的变化。我们比较间接和直接碳循环重建对重新采样阈值表示内部可变性。然后,我们使用这些重建来初始化集合,以评估重建后目标的预测效果。对重建全球大气CO2的能力感兴趣,我们专注于全球碳循环的重建和预测技能。我们发现,通过物理场间接碳循环重建在全球和区域尺度上比重新采样阈值更好地再现了目标变化。在再现大尺度变化的同时,微推在生物地球化学循环反应非常敏感的物理状态变量中引入了系统的区域偏差。用距平相关系数(ACC)为0.8,去偏均方根误差(RMSE)为0.3 ppm间接重建了全球年海洋表面co2初始条件。直接重建略微改善了ACC的初始条件+0.1和去偏RMSE - 0.1 ppm。植被碳库的全球陆地碳循环初始条件间接重建以ACC为0.5,去偏RMSE为0.5 PgC跟踪目标。直接重建对空气-陆地二氧化碳通量的改善微不足道。全球大气中的二氧化碳被间接追踪为0.8的ACC和0.4 ppm的去偏RMSE。直接重建海洋和陆地碳循环可使ACC提高0.1 ppm,使去偏RMSE提高- 0.1 ppm。我们发现,与间接重建相比,直接重建提高了全球碳循环预测技能。在对平均偏差进行校正后,间接重建和直接重建都能很好地预测目标,并且在首个先导年之后仅比完全初始化略差。我们的完美模型研究表明,间接碳循环重建得到了满足全球CO2通量和大气CO2的初始条件。直接碳循环重建对全球碳循环的改善作用不大,因为物理气候状态重建的不完善阻碍了更好的生物地球化学重建。初始条件的这些微小改进对初始化的完美模型预测技能几乎没有改善。我们将这些微小的改进标记为由于直接碳循环重建微不足道,因为平均偏差减少产生类似的改进。由于现实世界预测系统中的重建偏差更强,我们的研究结果为目前碳循环预测系统中间接重建的实践增加了信心。
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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