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首页> 外文期刊>Journal of applied mathematics >A mixed prediction model of ground subsidence for civil infrastructures on soft ground
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A mixed prediction model of ground subsidence for civil infrastructures on soft ground

机译:软土地基民用基础设施地面沉降的混合预测模型

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摘要

The estimation of ground subsidence processes is an important subject for the asset management of civil infrastructures on soft ground, such as airport facilities. In the planning and design stage, there exist many uncertainties in geotechnical conditions, and it is impossible to estimate the ground subsidence process by deterministic methods. In this paper, the sets of sample paths designating ground subsidence processes are generated by use of a one-dimensional consolidation model incorporating inhomogeneous ground subsidence. Given the sample paths, the mixed subsidence model is presented to describe the probabilistic structure behind the sample paths. The mixed model can be updated by the Bayesian methods based upon the newly obtained monitoring data. Concretely speaking, in order to estimate the updating models, Markov Chain Monte Calro method, which is the frontier technique in Bayesian statistics, is applied. Through a case study, this paper discussed the applicability of the proposed method and illustrated its possible application and future works.
机译:地面沉降过程的估计是对软基础上的民用基础设施(如机场设施)进行资产管理的重要课题。在规划设计阶段,岩土条件存在很多不确定性,不可能通过确定性方法估算地面沉降过程。在本文中,通过使用包含非均匀地面沉降的一维固结模型来生成指定地面沉降过程的样本路径集。给定样本路径,提出了混合沉降模型来描述样本路径背后的概率结构。混合模型可以基于新获得的监视数据通过贝叶斯方法进行更新。具体而言,为了估计更新模型,应用了马尔可夫链蒙特卡罗方法,这是贝叶斯统计中的前沿技术。通过案例研究,本文讨论了该方法的适用性,并说明了其可能的应用和未来的工作。

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