首页> 外文期刊>Atmospheric Measurement Techniques >The new Passive microwave Neural network Precipitation Retrieval (PNPR) algorithm for the cross-track scanning ATMS radiometer: description and verification study over Europe and Africa using GPM and TRMM spaceborne radars
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The new Passive microwave Neural network Precipitation Retrieval (PNPR) algorithm for the cross-track scanning ATMS radiometer: description and verification study over Europe and Africa using GPM and TRMM spaceborne radars

机译:跨轨扫描ATMS辐射计的新型无源微波神经网络降水检索(PNPR)算法:使用GPM和TRMM星载雷达在欧洲和非洲进行描述和验证研究

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The objective of this paper is to describe the development and evaluate the performance of a completely new version of the Passive microwave Neural network Precipitation Retrieval (PNPR v2), an algorithm based on a neural network approach, designed to retrieve the instantaneous surface precipitation rate using the cross-track Advanced Technology Microwave Sounder (ATMS) radiometer measurements. This algorithm, developed within the EUMETSAT H-SAF program, represents an evolution of the previous version (PNPR v1), developed for AMSU/MHS radiometers (and used and distributed operationally within H-SAF), with improvements aimed at exploiting the new precipitation-sensing capabilities of ATMS with respect to AMSU/MHS. In the design of the neural network the new ATMS channels compared to AMSU/MHS, and their combinations, including the brightness temperature differences in the water vapor absorption band, around 183 GHz, are considered. The algorithm is based on a single neural network, for all types of surface background, trained using a large database based on 94 cloud-resolving model simulations over the European and the African areas.
机译:本文的目的是描述无源微波神经网络降水检索(PNPR v2)的全新版本的开发并评估其性能,这是一种基于神经网络方法的算法,旨在使用以下方法检索瞬时表面降水率跨轨先进技术微波测深仪(ATMS)辐射计测量。此算法是在EUMETSAT H-SAF计划内开发的,代表了为AMSU / MHS辐射计开发(并在H-SAF内可操作使用和分发)开发的先前版本(PNPR v1)的改进,旨在利用新的降水量进行改进ATMS的AMSU / MHS感知功能。在神经网络的设计中,考虑了与AMSU / MHS相比的新ATMS通道及其组合,包括183 GHz附近水蒸气吸收带中的亮温差。该算法基于单个神经网络,适用于所有类型的表面背景,并使用大型数据库进行了训练,该数据库基于欧洲和非洲地区的94种云解析模型模拟。

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