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Improving radar estimates of rainfall using an input subset of artificial neural networks

机译:使用人工神经网络的输入子集改善雷达对降雨的估计

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An input subset including average radar reflectivity (Z(ave)) and its standard deviation (SD) is proposed to improve radar estimates of rainfall based on a radial basis function (RBF) neural network. The RBF derives a relationship from a historical input subset, called a training dataset, consisting of radar measurements such as reflectivity (Z) aloft and associated rainfall observation (R) on the ground. The unknown rainfall rate can then be predicted over the derived relationship with known radar measurements. The selection of the input subset has a significant impact on the prediction performance. This study simplified the selection of input subsets and studied its improvement in rainfall estimation. The proposed subset includes: (1) the Z(ave) of the observed Z within a given distance from the ground observation to represent the intensity of a storm system and (2) the SD of the observed Z to describe the spatial variability. Using three historical rainfall events in 1999 near Darwin, Australia, the performance evaluation is conducted using three approaches: an empirical Z - R relation, RBF with Z, and RBF with Z(ave) and SD. The results showed that the RBF with both Z(ave) and SD achieved better rainfall estimations than the RBF using only Z. Two performance measures were used: (1) the Pearson correlation coefficient improved from 0.15 to 0.58 and (2) the average root-mean-square error decreased from 14.14 mm to 11.43 mm. The proposed model and findings can be used for further applications involving the use of neural networks for radar estimates of rainfall. (C) 2016 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:提出了一个包含平均雷达反射率(Z(ave))及其标准偏差(SD)的输入子集,以基于径向基函数(RBF)神经网络来改善雷达的降雨估计。 RBF从称为训练数据集的历史输入子集中得出一种关系,该子集包括雷达测量值,例如高空反射率(Z)和相关的地面降雨观测值(R)。然后可以利用已知的雷达测量值在导出的关系上预测未知的降雨率。输入子集的选择对预测性能有重大影响。这项研究简化了输入子集的选择,并研究了其在降雨估计中的改进。提出的子集包括:(1)在距地面观测点的给定距离内的被观测Z的Z(ave),以表示风暴系统的强度;(2)被观测Z的SD,以描述空间变异性。使用1999年在澳大利亚达尔文附近的三个历史降雨事件,使用三种方法进行性能评估:经验Z-R关系,RBF与Z以及RBF与Z(ave)和SD。结果表明,与仅使用Z的RBF相比,具有Z(ave)和SD的RBF都能获得更好的降雨估计。采用了两种性能指标:(1)Pearson相关系数从0.15提高到0.58,以及(2)平均根-均方误差从14.14毫米降低到11.43毫米。所提出的模型和发现可以用于涉及将神经网络用于降雨雷达估计的进一步应用。 (C)2016年光电仪器工程师学会(SPIE)

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