首页> 外文会议>Education Technology and Training, 2008. and 2008 International Workshop on Geoscience and Remote Sensing. ETT and GRS 2008 >Application of Back-Propagation Neural Network to Estimate Precipitation with Doppler Radar in Yishuhe Watershed of China
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Application of Back-Propagation Neural Network to Estimate Precipitation with Doppler Radar in Yishuhe Watershed of China

机译:反向传播神经网络在中国伊舒河流域多普勒雷达降水估算中的应用

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By means of the Doppler radar measurements and automatic precipitation station data collected during four precipitation processes of 2005 in the Yishuhe Watershed, the back-propagation neural network (BPNN) based on BFGS algorithm is used to train and estimate the rainfall. Reflectivity (Z) and rain intensity (R) relation are determined by an improved window probability matching method and used to verify and evaluate the precision of BPNN. The results suggested that the precision from BPNN is higher than from Z-R relation, especially in intensified rainfall process. The hourly rainfall and total accumulations of BPNN is in good consistence with rain gauge observation in intensified process and exists some extent overestimation in medium intensified process. Rainfall estimation of Z-R relation would yield underestimation of different degree with the change of rainfall intensity, the more underestimation, the more intensified rainfall process.
机译:通过对伊舒河流域2005年四个降水过程的多普勒雷达测量和自动降水站数据的采集,利用基于BFGS算法的BP神经网络对降水进行了训练和估算。通过改进的窗口概率匹配方法确定反射率(Z)和降雨强度(R)的关系,并用于验证和评估BPNN的精度。结果表明,BPNN的精度高于Z-R关系,特别是在降雨增加的情况下。在强化过程中​​,BPNN的小时降水量和总累积量与雨量计观测值吻合良好,在中等强化过程中​​存在一定程度的高估。 Z-R关系的降雨估计会随着降雨强度的变化而不同程度地产生低估,低估越多,降雨过程越剧烈。

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