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首页> 外文期刊>Journal of Hydrology >Seasonal streamflow prediction by a combined climate-hydrologic system for river basins of Taiwan
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Seasonal streamflow prediction by a combined climate-hydrologic system for river basins of Taiwan

机译:台湾水河流域气候-水文联合系统季节性流量预测

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A combined, climate-hydrologic system with three components to predict the streamflow of two river basins of Taiwan at one season (3-month) lead time for the NDJ and JFM seasons was developed. The first component consists of the wavelet-based, ANN-GA model (Artificial Neural Network calibrated by Genetic Algorithm) which predicts the seasonal rainfall by using selected sea surface temperature (SST) as predictors, given that SST are generally predictable by climate models up to 6-month lead time. For the second component, three disaggregation models, Valencia and Schaake (VS), Lane, and Canonical Random Cascade Model (CRCM), were tested to compare the accuracy of seasonal rainfall disaggregated by these three models to 3-day time scale rainfall data. The third component consists of the continuous rainfall-runoff model modified from HBV (called the MHBV) and calibrated by a global optimization algorithm against the observed rainfall and streamflow data of the Shihmen and Tsengwen river basins of Taiwan. The proposed system was tested, first by disaggregating the predicted seasonal rainfall of ANN-GA to rainfall of 3-day time step using the Lane model; then the disaggregated rainfall data was used to drive the calibrated MHBV to predict the streamflow for both river basins at 3-day time step up to a season's lead time. Overall, the streamflow predicted by this combined system for the NDJ season, which is better than that of the JFM season, will be useful for the seasonal planning and management of water resources of these two river basins of Taiwan.
机译:开发了一个由三部分组成的组合气候水文系统,用于预测NDJ和JFM季节的台湾两个河流域在一个季节(3个月)提前期的流量。第一部分由基于小波的ANN-GA模型(通过遗传算法校准的人工神经网络)组成,该模型通过使用选定的海表温度(SST)作为预测因子来预测季节性降雨,因为通常可以通过气候模型来预测SST六个月的交货时间。对于第二部分,测试了三个分解模型,分别是瓦伦西亚和沙克(VS),莱恩和规范的随机喀斯喀特模型(CRCM),以比较这三个模型分解的季节性降雨与3天时标降雨数据的准确性。第三部分包括从HBV(称为MHBV)修改而来的连续降雨-径流模型,并通过全局优化算法对台湾石门和曾文河流域观测到的降雨和流量数据进行了校准。首先通过使用Lane模型将ANN-GA的预测季节性降雨分解为3天时间步长的降雨,然后对提出的系统进行了测试。然后使用分解后的降雨数据来驱动校准的MHBV,以预测3天时间到一个季节的提前期之前两个流域的水流量。总体而言,用这种组合系统预测的NDJ季节的水流要比JFM季节的水流好,这将有助于台湾这两个流域的水资源的季节规划和管理。

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