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首页> 外文期刊>Atmospheric Measurement Techniques >Averaging kernel prediction from atmospheric and surface state parameters based on multiple regression for nadir-viewing satellite measurements of carbon monoxide and ozone
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Averaging kernel prediction from atmospheric and surface state parameters based on multiple regression for nadir-viewing satellite measurements of carbon monoxide and ozone

机译:基于多重回归的大气和表面状态参数的平均内核预测,用于最低观测卫星对一氧化碳和臭氧的测量

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摘要

A current obstacle to the observation system simulation experiments (OSSEs) used to quantify the potential performance of future atmospheric composition remote sensing systems is a computationally efficient method to define the scene-dependent vertical sensitivity of measurements as expressed by the retrieval averaging kernels (AKs). We present a method for the efficient prediction of AKs for multispectral retrievals of carbon monoxide (CO) and ozone (O_3) based on actual retrievals from MOPITT (Measurements Of Pollution In The Troposphere) on the Earth Observing System (EOS)-Terra satellite and TES (Tropospheric Emission Spectrometer) and OMI (Ozone Monitoring Instrument) on EOS-Aura, respectively. This employs a multiple regression approach for deriving scene-dependent AKs using predictors based on state parameters such as the thermal contrast between the surface and lower atmospheric layers, trace gas volume mixing ratios (VMRs), solar zenith angle, water vapor amount, etc. We first compute the singular value decomposition (SVD) for individual cloud-free AKs and retain the first three ranked singular vectors in order to fit the most significant orthogonal components of the AK in the subsequent multiple regression on a training set of retrieval cases. The resulting fit coefficients are applied to the predictors from a different test set of test retrievals cased to reconstruct predicted AKs, which can then be evaluated against the true retrieval AKs from the test set. By comparing the VMR profile adjustment resulting from the use of the predicted vs. true AKs, we quantify the CO and O_3 VMR profile errors associated with the use of the predicted AKs compared to the true AKs that might be obtained from a computationally expensive full retrieval calculation as part of an OSSE. Similarly, we estimate the errors in CO and O_3 VMRs from using a single regional average AK to represent all retrievals, which has been a common approximation in chemical OSSEs performed to date. For both CO and O_3 in the lower troposphere, we find a significant reduction in error when using the predicted AKs as compared to a single average AK. This study examined data from the continental United States (CONUS) for 2006, but the approach could be applied to other regions and times.
机译:用于量化未来大气成分遥感系统潜在性能的观测系统模拟实验(OSSE)的当前障碍是一种计算有效的方法,用于定义由取景平均核(AK)表示的与场景有关的垂直灵敏度。我们基于对地观测系统(EOS)-Terra卫星上的MOPITT(对流层污染测量)的实际反演,提出了一种有效预测一氧化碳(CO)和臭氧(O_3)多光谱检索的AK的方法EOS-Aura上的TES(对流层发射光谱仪)和OMI(臭氧监测仪)。它采用多元回归方法,基于状态参数(例如表面和较低大气层之间的热对比度,痕量气体体积混合比(VMR),太阳天顶角,水蒸气量等)使用预测器来使用场景预测的AK。我们首先计算单个无云AK的奇异值分解(SVD),并保留前三个排名的奇异向量,以便在随后的一组检索案例的多元回归中拟合AK的最重要正交分量。将结果拟合系数应用于来自不同案例的测试取回测试集的预测变量,以重建预测的AK,然后可以根据来自测试集的真实取回AK对其进行评估。通过比较使用预测AK和真实AK所产生的VMR轮廓调整,我们可以将与使用预测AK关联的CO和O_3 VMR轮廓误差与可能从计算上昂贵的完全检索中获得的真实AK进行比较计算作为OSSE的一部分。同样,我们通过使用单个区域平均AK表示所有取值来估算CO和O_3 VMR的误差,这迄今为止是化学OSSE的常见近似值。对于低层对流层中的CO和O_3而言,与单个平均AK相比,使用预测AK时,我们发现误差显着降低。这项研究检查了来自美国大陆(CONUS)2006年的数据,但是该方法可以应用于其他地区和时间。

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