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Nonlinear Statistical Retrieval of Atmospheric Profiles From MetOp-IASI and MTG-IRS Infrared Sounding Data

机译:从MetOp-IASI和MTG-IRS红外探测数据对大气廓线进行非线性统计检索

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摘要

This paper evaluates nonlinear retrieval methods to derive atmospheric properties from hyperspectral infrared sounding spectra, with emphasis on the retrieval of temperature, humidity, and ozone atmospheric profiles. We concentrate on the Infrared Atmospheric Sounding Interferometer (IASI) onboard the MetOp-A satellite data for the future Meteosat Third Generation Infrared Sounder (MTG-IRS). The methods proposed in this work are compared in terms of both accuracy and speed with the current MTG-IRS L2 processing concept, which processes MetOp-IASI and proxy MTG-IRS data. The official chain consists of a principal component extraction, typically referred to as empirical orthogonal functions (EOF) and a subsequent canonical linear regression. This research proposes the evaluation of some other methodological advances considering: 1) other linear feature extraction methods instead of EOF, such as partial least squares; and 2) the linear combination of nonlinear regression models in the form of committee of experts. The nonlinear regression models considered in this work are artificial neural networks and kernel ridge regression as nonparametric multioutput powerful regression tools. Results show that, in general, nonlinear models yield better results than linear retrieval for both MetOp-IASI and MTG-IRS synthetic and real data. Averaged gains throughout the column of +1.8 K and +2.2 K are obtained for temperature profile estimation from MetOp-IASI and IRS data, respectively. Similar gains are obtained for the estimation of dew point temperatures. In both variables, these improvements are more noticeable in lower atmospheric layers. The combination of models makes the retrieval more robust, improves the accuracy, and decreases the estimated bias. The nonlinear statistical approach is successfully compared to optimal estimation (OE) in terms of accuracy, bias and computational cost. These results confirm the potential of statistical nonlinear inversion techniques for the- retrieval of atmospheric profiles.
机译:本文评估了从高光谱红外探测光谱中得出大气性质的非线性检索方法,重点是温度,湿度和臭氧大气廓线的检索。我们专注于MetOp-A卫星数据上的红外大气探测干涉仪(IASI),用于未来的Meteosat第三代红外探测仪(MTG-IRS)。这项工作中提出的方法在准确性和速度方面都与当前的MTG-IRS L2处理概念进行了比较,该概念处理MetOp-IASI和代理MTG-IRS数据。正式链包括主成分提取(通常称为经验正交函数(EOF))和随后的规范线性回归。本研究提出了一些其他方法学方面的评估,其中包括:1)其他线性特征提取方法而不是EOF,例如偏最小二乘; 2)非线性回归模型的线性组合,形式为专家委员会。在这项工作中考虑的非线性回归模型是人工神经网络和核岭回归作为非参数多输出强大的回归工具。结果表明,对于MetOp-IASI和MTG-IRS综合数据和真实数据,非线性模型通常都比线性检索产生更好的结果。分别从MetOp-IASI和IRS数据获得的温度分布估计值,整个列的平均增益分别为+1.8 K和+2.2K。对于露点温度的估计,可以获得类似的增益。在这两个变量中,这些改进在较低的大气层中更为明显。模型的组合使检索更加可靠,提高了准确性并减少了估计的偏差。在准确性,偏差和计算成本方面,非线性统计方法已成功与最佳估计(OE)进行了比较。这些结果证实了统计非线性反演技术在大气剖面反演中的潜力。

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