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A novel soil moisture predicting method based on artificial neural network and Xinanjiang model

机译:一种基于人工神经网络与新江模型的新型土壤水分预测方法

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Soil moisture plays an important role in agricultural drought predicting, therefore there is an increasing demand for detailed predictions of soil moisture, especially at basin scales. However, so far soil moisture predictions are usually obtained as a by-product of climate and weather prediction models coupled with a land surface parameterization scheme, and there has been little dedicated work to meet this urgent need at basin scales. In order to improve the basin hydrological models' performance in the soil moisture forecasting, an integrated soil moisture predicting model based on Artificial Neural Network (ANN) and Xinanjiang model is proposed and presented in this paper. The performance of the new integrated soil moisture predicting model was tested in the Linyi watershed with a drainage area of 10040 km~2, located in the semi-arid area of the eastern China. The results suggest that the soil moisture simulated by the integrated ANN-Xinanjiang model is more agree with the observed ones than that simulated by Xinanjiang, and that the simulated soil moisture by both the models has the similar trend and temporal change pattern with the observed one.
机译:土壤水分在农业干旱预测中发挥着重要作用,因此对土壤水分的详细预测的需求越来越大,特别是在盆地鳞片上。然而,迄今的土壤水分预测通常是与土地表面参数化方案相连的气候和天气预报模型的副产物,并且在盆地尺度上满足这种迫切需要很少有效。为了提高盆地水分模型在土壤水分预测中的性能下,提出了一种基于人工神经网络(ANN)和Xinanjiang模型的综合土壤水分预测模型。新的综合土壤水分预测模型的性能在临沂流域测试,排水面积为10040公里〜2,位于中国东部的半干旱地区。结果表明,综合安克新江模型模拟的土壤水分与观察到的土壤水分比由新南江模拟的含量更加符合,而且模拟模型的模拟土壤水分具有类似的趋势和时间变化模式与观察到的模型。

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