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Linear correction method for improved atmospheric vertical profile retrieval based on ground-based microwave radiometer

机译:基于地面微波辐射计的改进大气垂直剖面反演的线性校正方法

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摘要

The back-propagation neural network (BPNN) is the most commonly used retrieval algorithm for microwave radiometers. Few researchers have attempted specifically to enhance training set quality, which markedly affects retrieval results and can minimize error and uncertainty in simulated brightness temperatures (BTs) in the BPNN. A local BPNN retrieval and correction method were established in this study using radiosonde data, BTs calculated from the radiosonde data, and a monochromatic radiative transfer model (February 2012 to August 2017) in Harbin. The correlation between simulated and observed BTs was improved after correction. The results were analyzed using three sets of comparisons before and after correction: (i) total root mean square errors and total mean absolute errors; (ii) root mean square errors and mean absolute errors in three layers; and (iii) root mean square errors and mean absolute errors under clear days and cloudy days. The results of this study contribute to the theoretical development of microwave remote sensing of atmospheric temperature and humidity.
机译:反向传播神经网络(BPNN)是微波辐射计最常用的检索算法。很少有研究人员专门尝试提高训练集质量,这会显着影响检索结果,并且可以最大程度地减少BPNN中模拟亮度温度(BT)的误差和不确定性。本研究利用哈尔滨的探空仪数据,由探空仪数据计算出的BTs和单色辐射传输模型(2012年2月至2017年8月)建立了本地BPNN检索和校正方法。校正后,模拟和观察到的BT之间的相关性得到改善。在校正前后使用三组比较分析结果:(i)总均方根误差和总平均绝对误差; (ii)三层均方根误差和绝对绝对误差; (iii)晴天和阴天的均方根误差和绝对绝对误差。这项研究的结果有助于大气温度和湿度的微波遥感的理论发展。

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