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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >A priori covariance estimation for CO2 and CH4 retrievals
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A priori covariance estimation for CO2 and CH4 retrievals

机译:CO2和CH4检索的先验协方差估计

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摘要

We derive the a priori covariance matrices of CO2 and CH4 for the retrieval of their profiles and columns from satellite spectral data. The monthly a priori covariance matrices of CO2 and CH4 at each grid cell (0.5° x 0.5°) on the globe are calculated using simulated data from the atmospheric tracer transport model. The a priori covariance matrix is defined as the sum of the bias and noise components, where the bias is obtained from the difference in seasonal cycle between simulated data and observation-based reference data, and the noise is defined as synoptic and interannual variations. The use of simulated data as well as observation-based reference data enables realistic variance and covariance values to be obtained for each temporal component. The seasonal bias is approximately 2 ppm for CO2and 20 ppb for CH4. A large difference in synoptic variations is obtained between simulated and reference data over the source region, especially over land. The interannual variances derived from the reference data show maximum values (4 ppm2 for CO2 and 220 ppb2 for CH4) in northern midlatitudes. Global data sets of a priori covariance matrices for CO2 and CH4 are now available for the retrieval of concentrations using satellite spectral data. Furthermore, the data set has the potential to be applied in studies in other fields, including estimates of CO2 flux error using inverse modeling and planning for ground-based observation networks.
机译:我们推导了CO2和CH4的先验协方差矩阵,用于从卫星光谱数据中检索其轮廓和列。使用来自大气示踪剂传输模型的模拟数据,计算了地球上每个网格单元(0.5°x 0.5°)处CO2和CH4的月度先验协方差矩阵。先验协方差矩阵定义为偏差和噪声分量的总和,其中偏差是从模拟数据和基于观测的参考数据之间的季节周期差异获得的,而噪声则定义为天气和年际变化。通过使用模拟数据以及基于观察的参考数据,可以为每个时间分量获取实际的方差和协方差值。 CO2的季节偏差约为2 ppm,CH4的季节偏差约为20 ppb。在源区域,特别是陆地上,模拟​​数据和参考数据之间的天气变化差异很大。从参考数据得出的年际方差显示了北中纬度的最大值(CO2为4 ppm2,CH4为220 ppb2)。现在可以使用CO2和CH4的先验协方差矩阵的全局数据集来使用卫星光谱数据检索浓度。此外,该数据集有可能在其他领域的研究中应用,包括使用逆向建模和基于地面的观测网络规划来估算CO2通量误差。

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