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Biases in regional carbon budgets from covariation of surface fluxes and weather in transport model inversions

机译:区域碳预算中的偏见从地表助势和运输模型反转中的天气变焦

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Recent advances in atmospheric transport model inversions could significantly reduce uncertainties in land carbon uptake through the assimilation of CO2 concentration measurements at weekly and shorter timescales. The potential of these measurements for reducing biases in estimated land carbon sinks depends on the strength of covariation between surface fluxes and atmospheric transport at these timescales and how well transport models represent this covariation. Daily to seasonal covariation of surface fluxes and atmospheric transport was estimated in observations at the US Southern Great Plains Atmospheric Radiation Measurement Climate Research Facility, and compared to an atmospheric transport model inversion (CarbonTracker). Covariation of transport and surface fluxes was stronger in CarbonTracker than in observations on synoptic (daily to weekly) timescales, with a wet year (2007) having significant covariation compared to a dry year (2006). Differences between observed and CarbonTracker synoptic covariation resulted in a 0.3 ppm CO2 enhancement in boundary layer concentrations during the growing season, and a corresponding enhancement in carbon uptake by 13% of the seasonal cycle amplitude in 2007, as estimated by an offline simplified transport model. This synoptic rectification of surface flux variability was of similar magnitude to the interannual variability in carbon sinks alone, and indicates that interannual variability in the inversions can be affected by biases in simulated synoptic rectifier effects. The most significant covariation of surface fluxes and transport had periodicities of 10 days and greater, suggesting that surface flux inversions would benefit from improved simulations of the effects of soil moisture on boundary layer heights and surface CO2 fluxes. Soil moisture remote sensing could be used along with CO2 concentration measurements to further constrain atmospheric transport model inversions.
机译:大气运输模型反转的最新进展可以通过每周和较短的时间尺度同化CO 2浓度测量来显着降低土地碳吸收的不确定性。这些测量用于减少估计的土地碳汇的偏差的潜力取决于这些时间尺度的表面助熔剂和大气运输之间的变焦强度以及运输模型如何代表这种协变量。每天日常到季节性助核和大气运输的季节变焦估计在美国南方大型平原大气辐射测量气候研究机构的观察中,并与大气运输模型反演(CarbonTracker)相比。碳动机的转力和表面助焊剂比在概要(每天至每周)时间尺度的观察中更强,与干燥年份(2006年)相比,潮湿年(2007)。观察到的碳转移变性的差异导致生长季节的边界层浓度的0.3ppm CO2增强,2007年季节循环幅度的碳吸收中的相应增强,如离线简化的传输模型估计。这种表面通量变异性的这种概率整流对于单独的碳汇的续际变异性具有相似的幅度,并且表示逆转中的续际变化可能受模拟概要整流器效应中的偏差影响。表面助熔剂和运输最大的变焦具有10天,更大的周期性,表明表面助焊剂反转将受益于土壤水分对边界层高度和表面二氧化碳助熔剂影响的改进模拟。土壤湿度遥感可与CO2浓度测量一起使用,以进一步约束大气运输模型逆变。

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