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Development of a non-Gaussian copula Bayesian network for safety assessment of metro tunnel maintenance

机译:用于地铁隧道维护安全评估的非高斯copula贝叶斯网络的开发

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? 2023 Elsevier LtdThe operation and maintenance of metro systems play a crucial role in urban development, with a focus on ensuring the serviceability and safety of metro tunnels. Accurate evaluation of the condition of these tunnel states requires investigating the complex interaction of multiple factors that impact their safety state. This study developed a hybrid model that integrates pair copula constructions (PCCs) and Bayesian networks (BN) to assess the safety state of metro tunnels, considering complex dependencies among these factors. First, key performance indicators (KPIs) were selected to assess tunnel safety, based on six failure modes. Then, an improved copula-based PC algorithm was employed to learn the non-Gaussian bayesian network model, which eliminated the normality assumption in the marginal densities of the KPIs. Finally, a combination of forward reasoning and GM(1,1) was utilized to predict the safety state of the metro tunnel in time series, facilitating the formulation of effective operation and maintenance plans. Furthermore, the proposed approach was applied to a real case study of the Wuhan metro system to demonstrate its effectiveness and applicability. The results highlighted the significant influence of some KPIs, such as convergence deformation, dislocation displacement, and stripping area, on metro tunnel safety. These KPIs emerged as key factors requiring focused attention in the operation and maintenance of metro tunnels.
机译:?2023 爱思唯尔有限公司地铁系统的运营和维护在城市发展中发挥着至关重要的作用,重点是确保地铁隧道的可维护性和安全性。要准确评估这些隧道状态的状况,需要研究影响其安全状态的多种因素的复杂相互作用。本研究开发了一种混合模型,该模型集成了双copula结构(PCCs)和贝叶斯网络(BN),以评估地铁隧道的安全状态,并考虑这些因素之间的复杂依赖关系。首先,根据六种故障模式,选择关键绩效指标(KPI)来评估隧道安全性。然后,采用改进的基于copula的PC算法学习非高斯贝叶斯网络模型,消除了KPI边际密度中的正态性假设。最后,结合前向推理和GM(1,1)对地铁隧道的安全状态进行时间序列预测,有助于制定有效的运维计划。此外,将所提方法应用于武汉地铁系统的真实案例研究,以验证其有效性和适用性。结果表明,收敛变形、位错位移、剥离面积等关键绩效指标对地铁隧道安全有显著影响。这些关键绩效指标成为地铁隧道运营和维护中需要重点关注的关键因素。

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