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Use of backpropagation neural network for landslide monitoring: a case study in the higher Himalaya

机译:反向传播神经网络在滑坡监测中的应用:以喜马拉雅山上游为例

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This paper presents a case study of landslide monitoring and evaluation at Okharpauwa. 19 km Chainage along Kathmandu-Trishuli highway in Nepal. An attempt has been made to predict slope movements using backpropagation neural network (BPNN). A Matlab-based BPNN model is developed, and the data from the case study are used to train and test the developed model to enable prediction of the magnitude of the ground movements with the help of input variables that have direct physical significance. An infiltration coefficient is introduced in the network architecture apart from antecedent rainfall, slope profile, groundwater level and shear strength of soil. A four-layered backpropagation neural network with an input layer, two hidden layers and one output layer is found optimal. The developed BPNN model demonstrates a promising result and fairly accurately predicts the slope movement.
机译:本文以Okharpauwa滑坡监测与评估为例。尼泊尔加德满都-特里修利(Kathmandu-Trishuli)公路沿线的19 km捆绑物。已经尝试使用反向传播神经网络(BPNN)来预测边坡运动。开发了基于Matlab的BPNN模型,并将案例研究中的数据用于训练和测试开发的模型,以借助具有直接物理意义的输入变量来预测地面运动的幅度。除前期降雨,坡度,地下水位和土壤抗剪强度外,网络结构还引入了入渗系数。发现具有输入层,两个隐藏层和一个输出层的四层反向传播神经网络是最佳的。所开发的BPNN模型显示出令人鼓舞的结果,并且相当准确地预测了坡度运动。

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