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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Peak Ground Acceleration Prediction by Artificial Neural Networks for Northwestern Turkey
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Peak Ground Acceleration Prediction by Artificial Neural Networks for Northwestern Turkey

机译:人工神经网络预测土耳其西北部的峰值地面加速度

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Three different artificial neural network (ANN) methods, namely, feed-forward back-propagation (FFBP), radial basis function (RBF), and generalized regression neural networks (GRNNs) were applied to predict peak ground acceleration (PGA). Ninety five three-component records from 15 ground motions that occurred in Northwestern Turkey between 1999 and 2001 were used during the applications. The earthquake moment magnitude, hypocentral distance, focal depth, and site conditions were used as inputs to estimate PGA for vertical (U-D), east-west (E-W), and north-south (N-S) directions. The direction of the maximum PGA of the three components was also added to the input layer to obtain the maximum PGA. Testing stage results of three ANN methods indicated that the FFBPs were superior to the GRNN and the RBF for all directions. The PGA values obtained from the FFBP were modified by linear regression analysis. The results showed that these modifications increased the prediction performances.
机译:前馈反向传播(FFBP),径向基函数(RBF)和广义回归神经网络(GRNN)三种不同的人工神经网络方法被用于预测峰值地面加速度(PGA)。应用期间,使用了1999年至2001年在土耳其西北部发生的15次地震动中的95个三分量记录。地震矩震级,震中距离,震源深度和场地条件被用作估计垂直(U-D),东西向(E-W)和南北(N-S)方向的PGA的输入。这三个组件的最大PGA的方向也被添加到输入层以获得最大PGA。三种人工神经网络方法的测试阶段结果表明,FFBPs在所有方向上均优于GRNN和RBF。通过线性回归分析修改了从FFBP获得的PGA值。结果表明,这些修改提高了预测性能。

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