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Artificial neural network application to estimate kinematic soil pile interaction response parameters

机译:人工神经网络在运动土桩相互作用反应参数估计中的应用

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Six artificial neural network (ANN) models are developed to predict various response parameters of kinematic soil pile interaction. These responses include (1) kinematic response factors for free and fixed head piles in homogenous soil layer to derive foundation input motion (2) normalized bending moment at fixed head of pile in homogenous soil layer (3) normalized kinematic pile moment at the interface of two soil layers of sharply different soil stiffnesses. These ANN models represent simple solutions that can be implemented in a simple calculator capable of matrix operation and bypass the site response analysis and the complex wave diffraction analysis. The data required for ANN training is generated using beam on dynamic Winkler formulation (BDWF). Fifty percent of the data is used to train the ANN models while remaining 50% is used to test the ANN models. The trained ANN models show good agreement with BDWF results.
机译:开发了六个人工神经网络(ANN)模型来预测运动土桩相互作用的各种响应参数。这些响应包括(1)均质土层中自由桩和固定桩的运动学响应因子,以得出地基输入运动;(2)均质土层中桩固定头处的归一化弯矩;(3)土层界面处的归一化运动桩矩。刚度截然不同的两个土层。这些ANN模型表示简单的解决方案,可以在能够进行矩阵运算的简单计算器中实现,并绕过站点响应分析和复杂波衍射分析。 ANN训练所需的数据是使用动态Winkler公式(BDWF)上的波束生成的。 50%的数据用于训练ANN模型,而其余50%的数据用于测试ANN模型。经过训练的人工神经网络模型与BDWF结果显示出良好的一致性。

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