Development of an integrated game theory-optimization subground stratification model using cone penetration test (CPT) measurements

被引:0
作者
Mohammad Sadegh Farhadi
Tim Länsivaara
机构
[1] Tampere University,Department of Civil Engineering, Faculty of Built Environment
来源
Engineering with Computers | 2022年 / 38卷
关键词
Subground stratification; Cone penetration test (CPT); Game theory; Nash–Harsanyi bargaining model; Grey wolf optimizer (GWO);
D O I
暂无
中图分类号
学科分类号
摘要
The continuous cone penetration test (CPT) measurements provide an advantageous liable rapid tool for stratification and soil behavior classification that can be employed in the sustainable design of the infrastructures. However, the CPT measurements are often interpreted by geotechnical experts because of the involved complexities and uncertainties. In this study, a novel stratification and soil type behavior (SBT) classification model is developed to identify the transition and thicker layers by integrating the geotechnical knowledge with the three submodels of (a) locally estimated scatterplot smoothing (LOESS), (b) a game theory model known as Nash–Harsanyi (N–H) bargaining, and (c) grey wolf optimizer (GWO). The LOESS and integrated N–H bargaining-GWO models are, respectively, used to approximate the outliers in CPT measurements and identify the SBT and layer changes. Attractively, in the proposed model, the engineer has the opportunity to judge on the precision of the stratification profile regarding their own preferences in a project. Solving simple algebraic equations, high speed, identifying thick and the interlayer transition layers, and small required training data are the other advantages of the developed model. Finally, the applicability of the proposed model has been assessed in an example. The compared estimated and two other models’ stratification profiles highlighted the potential of the proposed model to identify thin transition layers.
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页码:1227 / 1242
页数:15
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共 140 条
[1]  
Abraham B(1989)Outlier detection and time series modeling Technometrics 31 241-248
[2]  
Chuang A(2017)A survey of methods for time series change point detection Knowl Inf Syst 51 339-367
[3]  
Aminikhanghahi S(2018)Effect of cone penetration conditioning on random field model parameters and impact of spatial variability on liquefaction-induced differential settlements J Geotech Geoenviron Eng 144 04018018-586
[4]  
Cook DJ(2019)Bayesian identification of soil stratigraphy based on soil behaviour type index Can Geotech J 56 570-204
[5]  
Bong T(1988)Estimation of time series parameters in the presence of outliers Technometrics 30 193-541
[6]  
Stuedlein AW(2018)Denoising of point cloud data for computer-aided design, engineering, and manufacturing Eng Comput 34 523-1097
[7]  
Cao ZJ(2020)An enhanced bacterial foraging optimization and its application for training kernel extreme learning machine Appl Soft Comput 86 105884-2007
[8]  
Zheng S(2019)Multivariate probability distribution for some intact rock properties Can Geotech J 56 1080-836
[9]  
Li DQ(2015)Cone penetration test (CPT)-based stratigraphic profiling using the wavelet transform modulus maxima method Can Geotech J 52 1993-610
[10]  
Phoon KK(1979)Robust locally weighted regression and smoothing scatterplots J Am Stat Assoc 74 829-248