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Multi sources hydrological assessment over Vu Gia Thu Bon Basin, Vietnam

机译:多源水文评估vu Gia Thu好盆地,越南

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摘要

The study aims to evaluate the long-term accuracy of global precipitation (Climate Prediction Center (CPC) and Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks - Climate Data Record (PERSIANN-CDR)) along with raingauge datasets at multiple temporal scales in the Vu Gia Thu Bon basin, Vietnam. Since there are few rainfall stations in this basin, it is important to validate multisource data for multiple purposes. This is the first time that a lumped hydrological model (i.e. Probability Distributed Moisture (PDM)) has been used for this basin. Various statistical indicators, including the correlation coefficient, mean absolute error (MAE), root mean square error (RMSE), percent bias (BIAS) and Taylor diagram, were used to evaluate the applicability of the global precipitation data and the PDM model. The precipitation datasets showed a good correlation with the raingauge rainfall data. In contrast, CPC underestimates while PERSIANN-CDR overestimates the raingauge rainfall. In general, PERSIANN-CDR performed slightly better than CPC. The daily streamflow simulation driven by PDM and all data sources underestimates the actual flow.
机译:该研究旨在评估全球降水的长期准确性(气候预测中心(CPC)和使用人工神经网络 - 气候数据记录(PERSIANN-CDR)的远程感测信息的降水估计以及多个时间秤的RaInGege数据集VU GIA THU BON盆地,越南。由于该盆中的降雨站很少,因此验证多种目的的多源数据非常重要。这是第一次用于该盆地的流体水文模型(即概率分布式水分(PDM)。使用各种统计指标,包括相关系数,平均绝对误差(MAE),根均线误差(RMSE),偏差(偏置)和泰勒图,用于评估全局降水数据和PDM模型的适用性。降水数据集与RaInGe降雨数据显示出良好的相关性。相比之下,CPC低估,而Persiann-CDR高估过度降雨。通常,Persiann-CDR比CPC略好。由PDM驱动的日常流式仿真和所有数据源都低估了实际流量。

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