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Using CNNs to Optimize Numerical Simulations in Geotechnical Engineering

机译:使用CNN优化岩土工程中的数值模拟

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Deep excavations are today mainly designed by manually optimising the wall's geometry, stiffness and strut or anchor layout. In order to better automate this process for sustained excavations, we are exploring the possibility of approximating key values using a machine learning (ML) model instead of calculating them with time-consuming numerical simulations. After demonstrating in our previous work that this approach works for simple use cases, we show in this paper that this method can be enhanced to adapt to complex real-world supported excavations. We have improved our ML model compared to our previous work by using a convolutional neural network (CNN) model, coding the excavation configuration as a set of layers of fixed height containing the soil parameters as well as the geometry of the walls and struts. The system is trained and evaluated on a set of synthetically generated situations using numerical simulation software. To validate this approach, we also compare our results to a set of 15 real-world situations in a t-SNE. Using our improved CNN model we could show that applying machine learning to predict the output of numerical simulation in the domain of geotechnical engineering not only works in simple cases but also in more complex, real-world situations.
机译:今天,深基坑的设计主要是通过手动优化墙的几何形状,刚度以及支柱或锚固布局来进行的。为了更好地实现持续挖掘的自动化,我们正在探索使用机器学习(ML)模型近似关键值的可能性,而不是使用费时的数值模拟来计算关键值。在我们先前的工作中证明了这种方法适用于简单的用例之后,我们在本文中表明可以对这种方法进行增强以适应复杂的现实世界支持的挖掘。与以前的工作相比,我们通过使用卷积神经网络(CNN)模型对ML模型进行了改进,将挖掘配置编码为一组固定高度的层,其中包含土壤参数以及墙和支柱的几何形状。使用数值模拟软件,可以在一组综合生成的情况下对系统进行培训和评估。为了验证这种方法,我们还将我们的结果与t-SNE中的一组15种实际情况进行了比较。使用我们改进的CNN模型,我们可以证明,在岩土工程领域应用机器学习来预测数值模拟的输出不仅适用于简单情况,而且适用于更复杂的实际情况。

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