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Artificial neural network with a cross-validation approach to blast-induced ground vibration propagation modeling

机译:具有交叉验证方法的人工神经网络爆炸诱导的地面振动传播建模

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Given their technical and economic advantages, the application of explosive substances to rock mass excavation is widely used. However, because of serious environmental restraints, there has been an increasing need to use complex tools to control environmental effects due to blast-induced ground vibrations. In the present study, an artificial neural network (ANN) withk-fold cross-validation was applied to a dataset containing 1114 observations that was obtained from published results; furthermore, quantitative and qualitative parameters were considered for ground vibration amplitude prediction. The best ANN model obtained has a maximum coefficient of determination of 0.840 and a mean absolute error of 5.59 and it comprises 17 input parameters, 12 neurons in a one-layer hidden layer, and a sigmoid transfer function. Compared with the traditional models, the model obtained using the proposed methodology demonstrated better generalization ability. Furthermore, the proposed methodology offers an ANN model with higher prediction ability.
机译:鉴于其技术和经济优势,广泛应用爆炸物质在岩石配质量挖掘中的应用。然而,由于环境限制严重,越来越需要使用复杂的工具来控制由于爆炸引起的地面振动而控制的环境影响。在本研究中,将折叠交叉验证的人工神经网络(ANN)施加到包含从公开结果中获得的1114观察的数据集;此外,考虑了用于地振动幅度预测的定量和定性参数。获得的最佳ANN模型具有0.840的最大测定系数和5.59的平均绝对误差,并且它包含17个输入参数,在单层隐藏层中12个神经元,以及符合矩形传递函数。与传统模型相比,使用所提出的方法获得的模型表现出更好的泛化能力。此外,所提出的方法提供了具有更高预测能力的ANN模型。

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