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An optimum metamodel for safety control of operational subway tunnel during underpass shield tunneling

机译:地下通道盾构隧道施工中运营地铁隧道安全控制的最佳元模型

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The settlement is regarded as an important index in underground engineering. When tunneling under across the operational subway tunnel, settlement of the operational tunnel should be monitored. To control the tunneling-induced movement of the operational subway tunnel, the operation parameters of mechanized-tunneling, namely, face and grout pressures, should be kept in a specific range. A hybrid approach is proposed utilizing uniform design method, and radial basis function neural network to develop the relation of settlement and related influential factors. Such connection is used as a tuning module for tunneling boring machine (TBM). Furthermore, implementing total station robot and soft computing method of support vector machine (SVM), a forecast model for settlement of the rail is established. The prediction tool SVM is improved by using the particle swarm optimization. Parameters c and g from the SVM and in the kernel function of the SVM are optimized using the particle swarm optimization. An illustrative case in Changsha Metro Line 3 constructing under the Metro Line 1 tunnel validates the prediction model. The feasibility of the metamodel is demonstrated by means of the example.
机译:沉降被认为是地下工程的重要指标。当穿越运营中的地铁隧道进行隧道施工时,应监视运营中的隧道的沉降情况。为了控制隧道在运营中引起的隧道移动,机械化隧道的运行参数(即工作面压力和灌浆压力)应保持在特定范围内。提出了一种采用统一设计方法和径向基函数神经网络的混合方法来发展沉降与相关影响因素的关系。这种连接用作隧道掘进机(TBM)的调整模块。此外,通过实现全站仪机器人和支持向量机的软计算方法,建立了铁路沉降预测模型。通过使用粒子群算法改进了预测工具SVM。使用粒子群优化对来自SVM以及SVM内核功能中的参数c和g进行优化。长沙地铁3号线在地铁1号线隧道下施工的一个实例验证了预测模型。通过示例证明了元模型的可行性。

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