{"title":"Modified AK-MCS method and its application on the reliability analysis of underground structures in the rock mass","authors":"N. Tran, D. Do, D. Hoxha, M. Vu, G. Armand","doi":"10.31814/stce.huce(nuce)2022-16(2)-04","DOIUrl":null,"url":null,"abstract":"This work aims at proposing the methodology on the basis of the extension of the famous reliability analysis, joining the Kriging and Monte Carlo Simulation (AK-MCS) metamodeling technique for analyzing the long-term stability of deep tunnel support constituted by two layers (a concrete liner covered with a compressible layer). A novel active learning function for selecting new training points enriches the Design of Experiment (DoE) of the built surrogate. This novel learning function, combined with an appropriate stopping criterion, improves the original AK-MCS method and significantly reduces the number of calls to the performance function. The efficiency of this modified AK-MCS method is demonstrated through two examples (a well-known academic problem and the case of a deep tunnel dug in the rock working viscoelastic Burgers model). In these examples, we illustrate the accuracy and performance of our method by comparing it with direct MCS and well-known Kriging metamodels (i.e., the classical AK-MCS and EGRA methods). ","PeriodicalId":387908,"journal":{"name":"Journal of Science and Technology in Civil Engineering (STCE) - HUCE","volume":"27 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2022-04-28","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Journal of Science and Technology in Civil Engineering (STCE) - HUCE","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.31814/stce.huce(nuce)2022-16(2)-04","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 2
Abstract
This work aims at proposing the methodology on the basis of the extension of the famous reliability analysis, joining the Kriging and Monte Carlo Simulation (AK-MCS) metamodeling technique for analyzing the long-term stability of deep tunnel support constituted by two layers (a concrete liner covered with a compressible layer). A novel active learning function for selecting new training points enriches the Design of Experiment (DoE) of the built surrogate. This novel learning function, combined with an appropriate stopping criterion, improves the original AK-MCS method and significantly reduces the number of calls to the performance function. The efficiency of this modified AK-MCS method is demonstrated through two examples (a well-known academic problem and the case of a deep tunnel dug in the rock working viscoelastic Burgers model). In these examples, we illustrate the accuracy and performance of our method by comparing it with direct MCS and well-known Kriging metamodels (i.e., the classical AK-MCS and EGRA methods).
本文旨在在扩展著名的可靠性分析的基础上,结合Kriging和Monte Carlo Simulation (AK-MCS)元建模技术,提出一种分析由两层(混凝土衬砌上可压缩层)构成的深埋隧道支护长期稳定性的方法。一种新的主动学习函数用于选择新的训练点,丰富了构建代理的实验设计(DoE)。这种新颖的学习函数与适当的停止准则相结合,改进了原来的AK-MCS方法,并显著减少了对性能函数的调用次数。通过两个算例(一个著名的理论问题和在岩石中深挖隧道的粘弹性Burgers模型)证明了这种改进的AK-MCS方法的有效性。在这些例子中,我们通过将我们的方法与直接MCS和著名的Kriging元模型(即经典的AK-MCS和EGRA方法)进行比较来说明我们的方法的准确性和性能。