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Some applications of a backpropagation neural network in geo-engineering

机译:反向传播神经网络在地球工程中的一些应用

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A MATLAB based backpropagation neural network (BPNN) model has been developed. Two major geo-engineering applications, namely, earth slope movement and ground movement around tunnels, are identified. Data obtained from case studies are used to train and test the developed model and the ground movement is predicted with the help of input variables that have direct physical significance. A new approach is adopted by introducing an infiltration coefficient in the network architecture apart from antecedent rainfall, slope profile, groundwater level and strength parameters to predict the slope movement. The input variables for settlement around underground excavations are taken from literature. The neural network models demonstrate a promising result predicting fairly successfully the ground behavior in both cases. If input variables influencing output goals are clearly identified and if a decent number of quality data are available, backpropagation neural network can be successfully applied as mapping and prediction tools in geotechnical investigations.
机译:已经开发了基于MATLAB的反向传播神经网络(BPNN)模型。确定了两个主要的地球工程应用程序,即土坡运动和隧道周围的地面运动。将从案例研究中获得的数据用于训练和测试开发的模型,并借助具有直接物理意义的输入变量来预测地面运动。除在先降雨,坡度,地下水位和强度参数以外,还通过在网络体系结构中引入渗透系数来预测坡度运动,从而采用了一种新方法。地下基坑周围沉降的输入变量取自文献。神经网络模型证明了在两种情况下都能相当成功地预测地面行为的有希望的结果。如果清楚地确定了影响输出目标的输入变量,并且可以获得大量的质量数据,那么反向传播神经网络可以成功地用作岩土工程勘测中的绘图和预测工具。

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