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Experimental study of overland flow resistance coefficient model of grassland based on BP neural network

机译:基于BP神经网络的草地陆陆流动系数模型试验研究

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The overland flow resistance on grassland slope of 20° was studied by using simulated rainfall experiments. Model of overland flow resistance coefficient was established based on BP neural network. The input variations of model were rainfall intensity, flow velocity, water depth, and roughness of slope surface, and the output variations was overland flow resistance coefficient. Model was optimized by Genetic Algorithm. The results show that the model can be used to calculate overland flow resistance coefficient, and has high simulation accuracy. The average prediction error of the optimized model of test set is 8.02%, and the maximum prediction error was 18.34%.
机译:通过使用模拟的降雨实验研究了20°的草地坡度的陆上流动阻力。基于BP神经网络建立了陆地流动性系数的模型。模型的输入变化是降雨强度,流速,水深和斜坡表面的粗糙度,输出变化是陆地流动性系数。模型由遗传算法优化。结果表明,该模型可用于计算覆盖型流动性系数,并具有高模拟精度。测试集的优化模型的平均预测误差为8.02%,最大预测误差为18.34%。

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