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Estimating wall deflections in deep excavations using Bayesian neural networks

机译:使用贝叶斯神经网络估算深基坑中的墙体变形

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In this study, a neural network algorithm has been used to model the soil-structure interaction behavior of deep excavations in clays. The hybrid evolutionary Bayesian back-propagation (EBBP) neural network was used in this study and utilizes the genetic algorithms and gradient descent method to determine the optimal parameters within a Bayesian framework to regularize the complexity of learning and to statistically reflect the uncertainty in data. The EBBP analysis was carried out on an extensive database of braced excavation performance from finite element analyses. Additional parametric studies indicate that the model gives logical and consistent trends. Back-analyses of some instrumented case histories from the literature also indicate that the trained neural network model gives reasonable predictions in comparison to the actual measured values. The trained model can serve as a simple and reliable prediction tool to enable estimates of maximum wall deflection for preliminary design of braced excavations in clay The model is able to take into consideration various factors such as the wall stiffness, support stiffness, the in-situ stress state, non-homogeneous soil conditions, and the variation of soil properties with depth. An added advantage of this approach is that it provides meaningful error bars for the model predictions.
机译:在这项研究中,已使用神经网络算法对粘土中深基坑的土-结构相互作用行为进行建模。本研究使用混合进化贝叶斯反向传播(EBBP)神经网络,并利用遗传算法和梯度下降方法确定贝叶斯框架内的最佳参数,以规范学习的复杂性并统计地反映数据的不确定性。 EBBP分析是在一个广泛的基于有限元分析的支撑开挖性能数据库中进行的。其他参数研究表明,该模型给出了逻辑上一致的趋势。从文献中对一些仪器化案例历史的回溯分析还表明,与实际测量值相比,训练后的神经网络模型给出了合理的预测。经过训练的模型可以用作简单可靠的预测工具,从而能够估算最大的墙体挠度,以进行粘土支护开挖的初步设计。该模型能够考虑各种因素,如墙体刚度,支撑刚度,原位应力状态,非均匀土壤条件以及土壤特性随深度的变化。这种方法的另一个优点是,它为模型预测提供了有意义的误差线。

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