首页> 外文期刊>Atmospheric chemistry and physics >A joint effort to deliver satellite retrieved atmospheric CO2 concentrations for surface flux inversions: The ensemble median algorithm EMMA
【24h】

A joint effort to deliver satellite retrieved atmospheric CO2 concentrations for surface flux inversions: The ensemble median algorithm EMMA

机译:联合努力提供卫星检索的大气CO2浓度以进行表面通量反演:集成中值算法EMMA

获取原文
获取原文并翻译 | 示例
           

摘要

We analyze an ensemble of seven XCO2 retrieval algorithms for SCIAMACHY (scanning imaging absorption spectrometer of atmospheric chartography) and GOSAT (greenhouse gases observing satellite). The ensemble spread can be interpreted as regional uncertainty and can help to identify locations for new TCCON (total carbon column observing network) validation sites. Additionally, we introduce the ensemble median algorithm EMMA combining individual soundings of the seven algorithms into one new data set. The ensemble takes advantage of the algorithms' independent developments. We find ensemble spreads being often < 1 ppm but rising up to 2 ppm especially in the tropics and East Asia. On the basis of gridded monthly averages, we compare EMMA and all individual algorithms with TCCON and CarbonTracker model results (potential outliers, north/south gradient, seasonal (peak-to-peak) amplitude, standard deviation of the difference). Our findings show that EMMA is a promising candidate for inverse modeling studies. Compared to CarbonTracker, the satellite retrievals find consistently larger north/south gradients (by 0.3-0.9 ppm) and seasonal amplitudes (by 1.5-2.0 ppm).
机译:我们分析了七个XCO2检索算法的集合,分别用于SCIAMACHY(大气海图的扫描成像吸收光谱仪)和GOSAT(温室气体观测卫星)。总体传播可以解释为区域不确定性,并且可以帮助确定新的TCCON(总碳柱观测网络)验证站点的位置。此外,我们介绍了集成中值算法EMMA,将这7种算法的各个声音组合到一个新的数据集中。集成利用算法的独立开发优势。我们发现总体扩散通常小于1 ppm,但上升到2 ppm,尤其是在热带地区和东亚。根据网格化的月平均值,我们将EMMA和所有单独的算法与TCCON和CarbonTracker模型结果(潜在离群值,南北梯度,南北梯度,季节性(峰峰值),差的标准偏差)进行比较。我们的发现表明,EMMA是逆模型研究的有希望的候选者。与CarbonTracker相比,卫星检索发现一致的北/南坡度较大(0.3-0.9 ppm)和季节性振幅(1.5-2.0 ppm)。

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号