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雨量站分布不均匀流域的降雨径流预报人工神经网络模型
王双银1, 冯国章1, 宋松柏1
西北农林科技大学 水利与建筑工程学院
摘要:
为解决传统方法难以可靠预报雨量站分布不均匀流域的次降雨径流量这一水文预报难题,探讨了人工神经网络模型用于该类水文预报问题的可能性。实例研究表明,以次暴雨量及其前期影响雨量为输入,次暴雨径流总量(净雨量)为输出的BP网络模型,预报的相对误差比蓄满产流模型预报的相对误差平均低9.2%,这说明,人工神经网络模型可作为雨量站分布不均匀等雨量观测存在系统偏差或不足流域的降雨径流预报模型。
关键词:  降雨径流预报  人工神经网络模型  误差控制准则  雨量站  流域
DOI:
分类号:
基金项目:西北农林科技大学青年专项基金(0808)
Artificial neural network model of rainfall-runoff forecasting for rain gage unevenly distributed watersheds
Abstract:
This paper presents the possibility of using artificial neural network model to forecast runoff for rain gage unevenly distributed watersheds.Case study shows that the BP network model is significantly efficient for forecasting for rain gage unevenly distributed watersheds by using the total rainfall and the previous affected rainfall as model input,and net rainfall for runoff as model output.The forecasting relative error of the BP network model has an average value 9.2% lower than that of runoff yield at natural storage-model.It is shown that artificial neural network model might be used to forecast or predict stream flow when the rainfall observation exhibits systematic errors.
Key words:  rainfall-runoff forecasting  artificial neural network model  error control criteria  rain gage  and watershed