陈仁升, 康尔泗, 张济世. 应用GRNN神经网络模型计算西北干旱区内陆河流域出山径流[J]. 水科学进展, 2002, 13(1): 87-92.
引用本文: 陈仁升, 康尔泗, 张济世. 应用GRNN神经网络模型计算西北干旱区内陆河流域出山径流[J]. 水科学进展, 2002, 13(1): 87-92.
CHEN Ren-sheng, KANG Er-si, ZHANG Ji-shi. Application of the generalized regression neural network to simulating runoff from the mountainous watersheds of inland river basins in the arid area of northwest China[J]. Advances in Water Science, 2002, 13(1): 87-92.
Citation: CHEN Ren-sheng, KANG Er-si, ZHANG Ji-shi. Application of the generalized regression neural network to simulating runoff from the mountainous watersheds of inland river basins in the arid area of northwest China[J]. Advances in Water Science, 2002, 13(1): 87-92.

应用GRNN神经网络模型计算西北干旱区内陆河流域出山径流

Application of the generalized regression neural network to simulating runoff from the mountainous watersheds of inland river basins in the arid area of northwest China

  • 摘要: 根据全球变化对2030年降水量和气温的预测结果,设置不同的气候变化情景,应用GRNN模型对黑河出山径流进行了预测。结果表明,到2030年,黑河出山径流将有小幅度的增加。随着气温的不断上升,出山年径流量最终将减少。

     

    Abstract: According to the results of globle changing in the mountainous precipitation and air temperature of Northwest China and supposing possible several conditions of the precipitation and air temperature,this paper uses the generalized regression neural network model to predict the runof of the year 2030. The predicted results show that the runoff may arise to the year 2030,but the arising degree is not large,and ultimately the runof will decrease with arising of the air temperature.

     

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