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Statistical properties of atmospheric greenhouse gas measurements: Looking down from space and looking up from the ground

机译:大气温室气体测量的统计特性:从太空向下看,从地面上看

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摘要

Satellite remote sensing platforms can collect measurements on a global scale within a few days, which provides an unprecedented opportunity to characterize and understand the spatio-temporal variability of environmental variables. Because of the additional challenges of making precise and accurate measurements from space, it is essential to validate satellite remote sensing datasets with highly precise and accurate ground-based measurements. The focus of this article is on two sets of measurements: Atmospheric column-averaged carbon dioxide (CO2) collected by the Orbiting Carbon Observatory-2 (OCO-2) mission in its target mode of operation; and ground-based data used for validation from the Total Carbon Column Observing Network (TCCON). The current statistical modeling of the relationship between the less-precise OCO-2 satellite data (Y) and the more-precise TCCON ground-based data (X) assumes a linear regression and heteroscedastic measurement errors that reside in both the OCO-2 data and the TCCON data. To obtain consistent estimates of the regression coefficients, it is critical to determine the error variance of each datum in the regression. In this article, a rigorous statistical procedure is presented for obtaining these error variances through modeling the spatial and/or temporal dependence structure in the OCO-2 and TCCON datasets. Numerical results for analyzing data at the Lamont TCCON station and the corresponding OCO-2 target-mode data (orbit number 3590) illustrate our procedure.
机译:卫星遥感平台可以在几天内在全球范围内收集测量值,这为表征和了解环境变量的时空变化提供了前所未有的机会。由于从太空进行精确的测量还有其他挑战,因此必须使用高度精确的基于地面的测量来验证卫星遥感数据集。本文的重点是两套测量:轨道碳观测站2(OCO-2)任务在其目标操作模式下收集的大气柱平均二氧化碳(CO2);以及用于从总碳柱观测网络(TCCON)进行验证的地面数据。目前,对于精度较差的OCO-2卫星数据(Y)和精度较高的TCCON地面数据(X)之间的关系的统计模型,都假设线性回归和异方差测量误差同时存在于OCO-2数据中和TCCON数据。为了获得回归系数的一致估计,确定回归中每个基准的误差方差至关重要。在本文中,提出了一种严格的统计程序,用于通过对OCO-2和TCCON数据集中的空间和/或时间依赖性结构进行建模来获得这些误差方差。用于分析Lamont TCCON站数据和相应OCO-2目标模式数据(轨道号3590)的数值结果说明了我们的程序。

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