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Assessment of blast induced ground vibrations by artificial neural network

机译:利用人工神经网络评估爆炸引起的地面振动

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Blast-induced ground motion is analyzed by means of two prediction methods. First conventional approach assumes several types of nonlinear dependence of peak particle velocity on scaled distance from the explosion charge, while the second technique implements a feed-forward three-layer back-propagation neural network with three nodes in input layer (total charge, maximum charge per delay and distance from explosive charge to monitoring point) and only one node in output layer (peak particle velocity). As a result, traditional predictors give acceptable prediction accuracy (r>0.7) when compared with registered values of peak particle velocity. Regarding the forecasting accuracy estimated by neural network, model with nine hidden nodes gives reasonable predictive precision (r>0.9), with much lower standard error in comparison to conventional predictors.
机译:利用两种预测方法对爆炸引起的地面运动进行了分析。第一种常规方法假设峰值粒子速度与爆炸装药的标定距离有几种非线性相关性,而第二种技术实现了前馈三层反向传播神经网络,在输入层中有三个节点(总装料,最大装料)每个延迟和从炸药到监测点的距离)和输出层中只有一个节点(峰值粒子速度)。结果,当与峰值粒子速度的注册值进行比较时,传统的预测器可提供可接受的预测精度(r> 0.7)。关于由神经网络估计的预测精度,具有9个隐藏节点的模型可提供合理的预测精度(r> 0.9),与传统的预测器相比,其标准误要低得多。

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