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首页> 外文期刊>Atmospheric chemistry and physics >Regional-scale geostatistical inverse modeling of North American CO _2 fluxes: A synthetic data study
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Regional-scale geostatistical inverse modeling of North American CO _2 fluxes: A synthetic data study

机译:北美CO _2通量的区域尺度地统计反演:综合数据研究

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摘要

A series of synthetic data experiments is performed to investigate the ability of a regional atmospheric inversion to estimate grid-scale CO _2 fluxes during the growing season over North America. The inversions are performed within a geostatistical framework without the use of any prior flux estimates or auxiliary variables, in order to focus on the atmospheric constraint provided by the nine towers collecting continuous, calibrated CO _2 measurements in 2004. Using synthetic measurements and their associated concentration footprints, flux and model-data mismatch covariance parameters are first optimized, and then fluxes and their uncertainties are estimated at three different temporal resolutions. These temporal resolutions, which include a four-day average, a four-day-average diurnal cycle with 3-hourly increments, and 3-hourly fluxes, are chosen to help assess the impact of temporal aggregation errors on the estimated fluxes and covariance parameters. Estimating fluxes at a temporal resolution that can adjust the diurnal variability is found to be critical both for recovering covariance parameters directly from the atmospheric data, and for inferring accurate ecoregion-scale fluxes. Accounting for both spatial and temporal a priori covariance in the flux distribution is also found to be necessary for recovering accurate a posteriori uncertainty bounds on the estimated fluxes. Overall, the results suggest that even a fairly sparse network of 9 towers collecting continuous CO_2 measurements across the continent, used with no auxiliary information or prior estimates of the flux distribution in time or space, can be used to infer relatively accurate monthly ecoregion scale CO_2 surface fluxes over North America within estimated uncertainty bounds. Simulated random transport error is shown to decrease the quality of flux estimates in under-constrained areas at the ecoregion scale, although the uncertainty bounds remain realistic. While these synthetic data inversions do not consider all potential issues associated with using actual measurement data, e.g. systematic transport errors or problems with the boundary conditions, they help to highlight the impact of inversion setup choices, and help to provide a baseline set of CO_2 fluxes for comparison with estimates from future real-data inversions.
机译:进行了一系列合成数据实验,以研究区域性大气反转反演的能力,以估计北美生长期的网格尺度CO _2通量。在地统计学框架内进行反演,而无需使用任何先前的通量估算值或辅助变量,以便专注于2004年收集连续,校准的CO _2测量值的九座塔所提供的大气限制。使用合成测量值及其相关浓度首先优化足迹,通量和模型数据失配协方差参数,然后在三种不同的时间分辨率下估算通量及其不确定性。选择这些时间分辨率,包括平均四天,平均三天的昼夜周期(每三天增量和每三小时通量),以帮助评估时间聚集误差对估计通量和协方差参数的影响。人们发现,以可以调整昼夜变化的时间分辨率估算通量对于直接从大气数据中恢复协方差参数以及推断准确的生态区域尺度通量都至关重要。还发现在通量分布中考虑空间和时间的先验协方差对于恢复估计通量的精确后验不确定性边界也是必要的。总体而言,结果表明,即使是一个由9个塔组成的稀疏网络,在整个大陆上收集连续的CO_2测量值,也没有辅助信息或对时间或空间通量分布的先前估计,也可以用来推断相对准确的每月生态区域规模CO_2在估计的不确定性范围内,北美上空的表面通量。结果表明,尽管不确定性范围仍然是现实的,但模拟的随机输运误差会降低生态区域尺度上欠约束地区的通量估算质量。尽管这些综合数据反演并未考虑与使用实际测量数据相关的所有潜在问题,例如系统性的运输错误或边界条件问题,它们有助于突出反演设置选择的影响,并有助于提供CO_2通量的基线集,以便与未来实际数据反演的估计值进行比较。

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