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Artificial neural network surrogate modelling for real-time predictions and control of building damage during mechanised tunnelling

机译:人工神经网络替代建模实时预测和机械化隧道建筑损伤控制

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摘要

Tunnelling induced surface settlements can cause damage in buildings located in the vicinity of the tunnel. Currently, surface settlements and associated building damage risks usually are estimated based on empirical equations, e.g. by assuming Gaussian curves for the settlement trough and by applying the Limit Tensile Strain Method or the tilt-based method to evaluate and categorise the expected building damage. In this paper, finite element simulations are used to predict the soil-structure interaction in mechanised tunnelling during the tunnel advancement. The time variant surface settlement field and the corresponding tunnelling induced strains in the facade of a building are computed by two independent finite element models. Coupling both models allows predicting the expected category of damage (cod) for the building, given the operational parameters of the tunnel drive. Based upon this coupled approach, a method is proposed in the paper, which provides optimised operational parameters (e.g. tail void grouting pressure and face support pressure) during the advancement of tunnel boring machines below vulnerable buildings, such that the risk of damage for existing buildings is minimised. For real-time applicability of this method two different types of Artificial Neural Networks in combination with the Proper Orthogonal Decomposition approach are generated as surrogate models of the finite element simulations. The surrogate models are finally linked and implemented into a user-friendly application, which can be used as an assistant tool to adjust the operational parameters of the tunnel boring machine at the construction site.
机译:隧道诱导的表面沉降可能导致位于隧道附近的建筑物中的损坏。目前,基于经验方程,通常估计表面沉降和相关的建筑物损坏风险,例如,估计。通过假设沉降槽的高斯曲线,并通过应用极限拉伸应变法或基于倾斜的方法来评估和分类预期建筑物损坏。本文使用有限元模拟来预测隧道推进过程中机械化隧道的土壤结构相互作用。通过两个独立的有限元模型来计算建筑物外观中的时变表面沉降场和相应的隧道诱导菌株。考虑到隧道驱动器的操作参数,耦合两个模型允许预测建筑物的预期损坏(COD)。基于这种耦合方法,在纸张中提出了一种方法,该方法在弱势建筑物下方的隧道钻孔机的推进过程中提供优化的操作参数(例如尾空隙灌浆压力和面部支撑压力),使得现有建筑物损坏的风险最小化。对于这种方法的实时适用性,两种不同类型的人工神经网络与适当的正交分解方法结合的是被生成的有限元模拟的代理模型。替代模型最终将连接并实施到用户友好的应用中,可用作调整施工现场隧道镗床的操作参数的辅助工具。

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