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Development of algorithms for nonlinear temperature retrieval problems in atmospheric remote sensing using regularization methods.

机译:使用正则化方法开发用于大气遥感中的非线性温度检索问题的算法。

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Infrared and microwave passive remote sensing of the atmosphere is used to determine the Earth's atmospheric state and surface properties. Radiance measured by the radiometers can be used to estimate atmospheric parameters such as temperature and water vapor content. These quantities are of primary importance for applications in meteorology, oceanography, and geophysical sciences.; In this research project, algorithms for atmospheric temperature retrievals based on radiometry from the High Resolution Infrared Radiation Sounder/2 (HIRS/2) and the Microwave Sounding Unit (MSU) were developed and validated. These are part of the TIROS Operational Vertical Sounder (TOVS), onboard the United States National Oceanic and Atmospheric Administration's (NOAA) operational satellites. The developed algorithms were based on the Gauss-Newton method for nonlinear least-squares, and the Tikhonov and Truncated Singular Value Decomposition (TSVD) regularization methods for linear and nonlinear inverse problems. A set of MATLAB{dollar}spcircler{dollar} functions for the retrieval algorithms was developed. Algorithms were validated by means of simulations using the GLA TOVS Code for Radiance and Jacobian Calculation: Version 1.0.; Results of retrievals for several initial values are presented and evaluated. The performance of the algorithms when supplied input data contaminated with noise was investigated. The estimated temperature profiles obtained for the retrievals of the noiseless cases were accurate. The computed root mean square (RMS) error was as low as 0.99 {dollar}spcirc{dollar}K for a tropopause initial guess at 10 km. Moreover, results of the retrievals for the noisy cases were unsatisfactory, since the estimated temperature profiles were inaccurate. The computed RMS error for these cases varied from 6.97 to 14.85 {dollar}spcirc{dollar}K, depending on the given initial guess.
机译:大气的红外和微波被动遥感用于确定地球的大气状态和表面特性。辐射计测量的辐射率可用于估算大气参数,例如温度和水蒸气含量。这些数量对于在气象学,海洋学和地球物理科学中的应用至关重要。在该研究项目中,开发并验证了基于高分辨率红外辐射测深仪/ 2(HIRS / 2)和微波测深仪(MSU)的辐射测定法检索大气温度的算法。这些是美国国家海洋和大气管理局(NOAA)卫星上TIROS可操作垂直探测仪(TOVS)的一部分。所开发的算法基于用于非线性最小二乘的Gauss-Newton方法,以及用于线性和非线性逆问题的Tikhonov和截断奇异值分解(TSVD)正则化方法。开发了一组用于检索算法的MATLAB {dollar} spcircler {dollar}函数。使用GLA TOVS辐射和雅可比计算代码(1.0版)通过仿真验证了算法。呈现并评估了几个初始值的检索结果。研究了当提供的输入数据被噪声污染时算法的性能。为检索无噪声情况而获得的估计温度曲线是准确的。对于在10 km处的对流层顶初始猜测,计算出的均方根(RMS)误差低至0.99 {sp} {dol}K。此外,由于估计的温度分布不准确,因此对于嘈杂情况的检索结果也不令人满意。根据给定的初始猜测,这些情况下计算出的RMS误差从6.97到14.85 {sp}。

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