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A soft computing approach for rainfall retrieval from the TRMM microwave imager

机译:从TRMM微波成像仪获取降雨的软计算方法

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摘要

A neural network model for rainfall retrieval over ocean from remotely sensed microwave (MW) brightness temperature (BT) is proposed. BT data are obtained from the Tropical Rainfall Measuring Mission (TRMM) Microwave Imager (TMI). The BT values from different channels of TMI over the Pacific Ocean (163/spl deg/ to 177/spl deg/W and 18/spl deg/ to 34/spl deg/S) are the input features. The near-surface rainfall rate from the Precipitation Radar (PR) are considered as a target. The proposed model consists of a neural network with online feature selection (FS) and clustering techniques. A K-means clustering algorithm is applied to cluster the selected features. Different networks have been trained to give an instantaneous rainfall rate with all input features as well as with selected features obtained by applying the FS algorithm. It is found that the hybrid network utilizing FS and clustering techniques performs better. The developed network is also validated with two independent datasets on March 14, 2000 over the Atlantic Ocean having stratiform rain and on March 21, 2000 over the Pacific Ocean having both stratiform and convective rain. In both cases, the hybrid network performs well with correlation coefficient improving to 0.78 and 0.81, respectively, in contrast to 0.70 and 0.75 for the network with all features. The rainfall rate retrieved from the hybrid network is also compared with the TMI surface rain rate, and a correlation of 0.84 and 0.75 is found for the two events. The proposed hybrid model is validated with a Doppler Weather Radar, and correlation of 0.52 is observed.
机译:提出了一种利用遥感微波(MW)亮度温度(BT)提取海洋降水的神经网络模型。 BT数据是从热带雨量测量任务(TRMM)微波成像仪(TMI)获得的。输入特征是太平洋上TMI不同通道的BT值(163 / spl deg /至177 / spl deg / W和18 / spl deg /至34 / spl deg / S)。目标是来自降水雷达(PR)的近地表降雨率。所提出的模型由具有在线特征选择(FS)和聚类技术的神经网络组成。应用K均值聚类算法对所选要素进行聚类。已经训练了不同的网络以提供具有所有输入特征以及通过应用FS算法获得的选定特征的瞬时降雨率。发现利用FS和集群技术的混合网络性能更好。 2000年3月14日在大西洋上出现层状降雨,而2000年3月21日在太平洋上出现层状和对流降雨,还用两个独立的数据集对发达的网络进行了验证。在这两种情况下,混合网络均表现良好,相关系数分别提高至0.78和0.81,而具有所有功能的网络的相关系数分别为0.70和0.75。还将从混合网络中获取的降雨率与TMI地表降雨率进行了比较,两个事件的相关性分别为0.84和0.75。用多普勒天气雷达对提出的混合模型进行了验证,相关性为0.52。

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