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Risk analysis during tunnel construction using Bayesian Networks: Porto Metro case study

机译:使用贝叶斯网络进行隧道施工期间的风险分析:Porto Metro案例研究

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This paper presents a methodology to systematically assess and manage the risks associated with tunnel construction. The methodology consists of combining a geologic prediction model that allows one to predict geology ahead of the tunnel construction, with a construction strategy decision model that allows one to choose amongst different construction strategies the one that leads to minimum risk. This model used tunnel boring machine performance data to relate to and predict geology. Both models are based on Bayesian Networks because of their ability to combine domain knowledge with data, encode dependencies among variables, and their ability to learn causal relationships. The combined geologic prediction-construction strategy decision model was applied to a case, the Porto Metro, in Portugal. The results of the geologic prediction model were in good agreement with the observed geology, and the results of the construction strategy decision support model were in good agreement with the construction methods used. Very significant is the ability of the model to predict changes in geology and consequently required changes in construction strategy. This risk assessment methodology provides a powerful tool with which planners and engineers can systematically assess and mitigate the inherent risks associated with tunnel construction.
机译:本文提出了一种系统地评估和管理与隧道建设相关的风险的方法。该方法包括将地质预测模型(允许一个人在隧道施工之前进行地质预测)与一种建筑策略决策模型(该模型可以使人们在不同的施工策略中选择一种导致风险最小的策略)结合起来。该模型使用隧道掘进机性能数据来关联和预测地质。两种模型都基于贝叶斯网络,因为它们具有将领域知识与数据相结合,对变量之间的依存关系进行编码以及能够学习因果关系的能力。组合的地质预测-构造策略决策模型已应用于葡萄牙Porto Metro案例。地质预测模型的结果与所观察的地质情况吻合良好,施工策略决策支持模型的结果与所采用的施工方法吻合良好。该模型预测地质变化的能力非常重要,因此可以预测施工策略的变化。这种风险评估方法提供了一个强大的工具,规划人员和工程师可以使用该工具系统地评估和减轻与隧道建设相关的固有风险。

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