首页> 外文期刊>Atmospheric Measurement Techniques Discussions >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:交叉扫描ATMS辐射计的新被动微波神经网络降水检索(PNPR)算法:使用GPM和TRMM星载雷达对欧洲和非洲的描述和验证研究

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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. The performance of PNPR v2 has been evaluated through an intercomparison of the instantaneous precipitation estimates with co-located estimates from the TRMM Precipitation Radar (TRMM-PR) and from the GPM Core Observatory Ku-band Precipitation Radar (GPM-KuPR). In the comparison with TRMM-PR, over the African area the statistical analysis was carried out for a 2-year (2013–2014) dataset of coincident observations over a regular grid at 0.5°??×??0.5° resolution. The results have shown a good agreement between PNPR v2 and TRMM-PR for the different surface types. The correlation coefficient (CC) was equal to 0.69 over ocean and 0.71 over vegetated land (lower values were obtained over arid land and coast), and the root mean squared error (RMSE) was equal to 1.30?mm?h?1 over ocean and 1.11?mm?h?1 over vegetated land. The results showed a slight tendency to underestimate moderate to high precipitation, mostly over land, and overestimate moderate to light precipitation over ocean. Similar results were obtained for the comparison with GPM-KuPR over the European area (15 months, from March 2014 to May 2015 of coincident overpasses) with slightly lower CC (0.59 over vegetated land and 0.57 over ocean) and RMSE (0.82?mm?h?1 over vegetated land and 0.71?mm?h?1 over ocean), confirming a good agreement also between PNPR v2 and GPM-KuPR. The performance of PNPR v2 over the African area was also compared to that of PNPR v1. PNPR v2 has higher R over the different surfaces, with generally better estimation of low precipitation, mostly over ocean, thanks to improvements in the design of the neural network and also to the improved capabilities of ATMS compared to AMSU/MHS. Both versions of PNPR algorithm have shown a general consistency with the TRMM-PR.
机译:本文的目的是描述发展和评估全新版本的被动微波神经网络降水检索(PNPR V2)的性能,基于神经网络方法的算法,旨在使用瞬时表面降水速率交叉轨道先进技术微波发声器(ATM)辐射计测量。这种算法在Eumetsat H-SAF程序中开发,代表了以AMSU / MHS辐射仪(并在H-SAF内使用和分发)开发的先前版本(PNPR V1)的演变,其有所改进旨在利用新的降水 - 关于AMSU / MHS的ATM的敏感性。在设计神经网络的设计中,与AMSU / MHS相比,新的ATMS通道及其组合,包括水蒸气吸收带中的亮度温度差异,约为183°GHz。该算法基于单个神经网络,适用于所有类型的表面背景,根据欧洲和非洲地区的94个云解决模型模拟使用大型数据库训练。已经通过与TrmM沉淀雷达(TRMM-PR)的共同定位估计和GPM核心观测库沉淀雷达(GPM-Kupr)的瞬时沉淀估计的瞬时降水估计进行了PNPR V2的性能。在与TRMM-PR的比较中,在非洲地区,统计分析是在0.5°×0.5°×0.5°×0.5°的常规网格上进行2年(2013-2014)的重合观测的分数。结果表明PNPR V2和TRMM-PR之间的良好一致性,用于不同的表面类型。相关系数(CC)在海洋上等于0.69,植被土地上的0.71(在干旱的土地和海岸上获得较低的值),并且根部平均平方误差(RMSE)等于1.30?mm?H?1在海洋上1.11?mm?h?1在植被的土地上。结果表明,低于中度至高降水,大多数在陆地上,高度降低到海洋的中度,结果表明略有倾向。与欧洲地区的GPM-Kupr相比,获得了类似的结果H?1在植被的土地上和0.71毫米?H?1在海洋上),在PNPR V2和GPM-Kupr之间也确认了良好的一致。与PNPR V1的PNPR V2对非洲地区的性能进行了比较。 PNPR V2在不同表面上具有更高的r,并且由于神经网络设计的改进以及与AMSU / MHS相比的改进的ATM的改进能力,通常更好地估计低沉淀,主要是海洋。 PNPR算法的两个版本都显示了与TRMM-PR的一般一致性。

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