Estimation of observation errors for large-scale atmospheric inversion of CO2 emissions from fossil fuel combustion

Yilong Wang, G. Broquet, P. Ciais, F. Chevallier, F. Vogel, N. Kadygrov, Lin Wu, Yi Yin, Rong Wang, S. Tao
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引用次数: 20

Abstract

Abstract National annual inventories of CO2 emitted during fossil fuel consumption (FFCO2) bear 5–10% uncertainties for developed countries, and are likely higher at intra annual scales or for developing countries. Given the current international efforts of mitigating actions, there is a need for independent verifications of these inventories. Atmospheric inversion assimilating atmospheric gradients of CO2 and radiocarbon measurements could provide an independent way of monitoring FFCO2 emissions. A strategy would be to deploy such measurements over continental scale networks and to conduct continental to global scale atmospheric inversions targeting the national and one-month scale budgets of the emissions. Uncertainties in the high-resolution distribution of the emissions could limit the skill for such a large-scale inversion framework. This study assesses the impact of such uncertainties on the potential for monitoring the emissions at large scale. In practice, it is more specifically dedicated to the derivation, typical quantification and analysis of critical sources of errors that affect the inversion of FFCO2 emissions when solving for them at a relatively coarse resolution with a coarse grid transport model. These errors include those due to the mismatch between the resolution of the transport model and the spatial variability of the actual fluxes and concentrations (i.e. the representation errors) and those due to the uncertainties in the spatial and temporal distribution of emissions at the transport model resolution when solving for the emissions at large scale (i.e. the aggregation errors). We show that the aggregation errors characterize the impact of the corresponding uncertainties on the potential for monitoring the emissions at large scale, even if solving for them at the transport model resolution. We propose a practical method to quantify these sources of errors, and compare them with the precision of FFCO2 measurements (i.e. the measurement errors) and the errors in the modelling of atmospheric transport (i.e. the transport errors). The results show that both the representation and measurement errors can be much larger than the aggregation errors. The magnitude of representation and aggregation errors is sensitive to sampling heights and temporal sampling integration time. The combination of these errors can reach up to about 50% of the typical signals, i.e. the atmospheric large-scale mean afternoon FFCO2 gradients between sites being assimilated by the inversion system. These errors have large temporal auto-correlation scales, but short spatial correlation scales. This indicates the need for accounting for these temporal auto-correlations in the atmospheric inversions and the need for dense networks to limit the impact of these errors on the inversion of FFCO2 emissions at large scale. More generally, comparisons of the representation and aggregation errors to the errors in simulated FFCO2 gradients due to uncertainties in current inventories suggest that the potential of inversions using global coarse-resolution models (with typical horizontal resolution of a couple of degrees) to retrieve FFCO2 emissions at sub-continental scale could be limited, and that meso-scale models with smaller representation errors would effectively increase the potential of inversions to constrain FFCO2 emission estimates.
化石燃料燃烧CO2排放大尺度大气反演观测误差的估计
发达国家在化石燃料消费过程中排放的国家年度二氧化碳清单(FFCO2)具有5-10%的不确定性,在年内尺度或发展中国家可能更高。鉴于目前国际社会为缓解行动所作的努力,有必要对这些清单进行独立核查。大气反演吸收大气CO2梯度和放射性碳测量可以提供一种独立的监测FFCO2排放的方法。一种策略是在大陆尺度的网络上部署这种测量,并针对国家和一个月尺度的排放预算进行大陆到全球尺度的大气逆温。高分辨率辐射分布的不确定性可能会限制这种大规模反演框架的技术。本研究评估了这种不确定性对大规模监测排放潜力的影响。在实践中,它更具体地致力于推导、典型量化和分析影响FFCO2排放反演的关键误差来源,并使用粗网格运输模型在相对粗的分辨率下求解它们。这些误差包括由于运输模式分辨率与实际通量和浓度的空间变异性不匹配造成的误差(即表示误差),以及由于在求解大尺度排放时,由于运输模式分辨率下排放的时空分布不确定造成的误差(即聚集误差)。我们表明,即使在运输模式分辨率下求解,聚合误差也表征了相应的不确定性对大尺度排放监测潜力的影响。我们提出了一种量化这些误差来源的实用方法,并将其与FFCO2测量精度(即测量误差)和大气输送建模误差(即输送误差)进行比较。结果表明,表示误差和测量误差都可能远大于聚合误差。表征和聚集误差的大小对采样高度和时间采样积分时间敏感。这些误差的组合可达到典型信号的50%左右,即被反演系统同化的站点间大气大尺度平均下午FFCO2梯度。这些误差具有较大的时间自相关尺度,而较短的空间相关尺度。这表明需要在大气反演中考虑这些时间自相关性,并且需要密集的网络来限制这些误差对大尺度FFCO2排放反演的影响。更一般地说,由于当前库存的不确定性,将表示和聚集误差与模拟FFCO2梯度的误差进行比较,表明使用全球粗分辨率模式(典型水平分辨率为两度)反演次大陆尺度FFCO2排放的潜力可能有限。具有较小表示误差的中尺度模式将有效地增加反演的潜力,以约束FFCO2排放估算。
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