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首页> 外文期刊>International Journal of Atmospheric Sciences >Neural Network Based Retrieval of Atmospheric Temperature Profile Using AMSU-A Observations
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Neural Network Based Retrieval of Atmospheric Temperature Profile Using AMSU-A Observations

机译:基于神经网络的AMSU-A观测反演大气温度曲线

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摘要

The present study describes artificial neural network (ANN) based approach for the retrieval of atmospheric temperature profiles from AMSU-A microwave temperature sounder. The nonlinear relationship between the temperature profiles and satellite brightness temperatures dictates the use of ANN, which is inherently nonlinear in nature. Since latitudinal variation of temperature is dominant one in the Earth’s atmosphere, separate network configurations have been established for different latitudinal belts, namely, tropics, mid-latitudes, and polar regions. Moreover, as surface emissivity in the microwave region of electromagnetic spectrum significantly influences the radiance (or equivalently the brightness temperature) at the satellite altitude, separate algorithms have been developed for land and ocean for training the networks. Temperature profiles from National Center for Environmental Prediction (NCEP) analysis and brightness temperature observations of AMSU-A onboard NOAA-19 for the year 2010 have been used for training of the networks. Further, the algorithm has been tested on the independent dataset comprising several months of 2012 AMSU-A observations. Finally, an error analysis has been performed by comparing retrieved profiles with collocated temperature profiles from NCEP. Errors in the tropical region are found to be less than those in the mid-latitude and polar regions. Also, in each region the errors over ocean are less than the corresponding ones over land.
机译:本研究描述了基于人工神经网络(ANN)的方法,用于从AMSU-A微波测温仪中检索大气温度剖面。温度曲线和卫星亮度温度之间的非线性关系决定了ANN的使用,而ANN本质上是非线性的。由于温度的纬度变化是地球大气中的主要变化,因此已经为不同的纬度带建立了独立的网络配置,即热带,中纬度和极地地区。此外,由于电磁波谱的微波区域中的表面发射率会显着影响卫星高度处的辐射(或等效的亮度温度),因此针对陆地和海洋开发了单独的算法来训练网络。国家环境预测中心(NCEP)分析的温度曲线和NOAA-19机载AMSU-A在2010年的亮度温度观测值已用于网络训练。此外,该算法已在包含2012年AMSU-A几个月观测结果的独立数据集上进行了测试。最后,通过将检索到的剖面与来自NCEP的并置温度剖面进行比较,进行了误差分析。发现热带地区的误差小于中纬度和极地地区的误差。同样,在每个区域,海洋上的误差小于陆地上的相应误差。

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