Regression Machine Learning Models for Probabilistic Stability Assessment of Buried Pipelines in Spatially Random Clays

被引:1
|
作者
Chansavang, Bounhome [1 ]
Kounlavong, Khamnoy [2 ]
Kumar, Divesh Ranjan [3 ]
Nguyen, Thanh Son [4 ]
Wipulanusat, Warit [3 ]
Keawsawasvong, Suraparb [5 ]
Jamsawang, Pitthaya [6 ]
机构
[1] Natl Univ Laos, Fac Engn, Dept Rd Bridge Engn, Viangchan, Laos
[2] Thammasat Univ, Thammasat Sch Engn, Dept Civil Engn, Res Unit Sci & Innovat Technol Civil Engn Infrastr, Pathum Thani 12120, Thailand
[3] Thammasat Univ, Thammasat Sch Engn, Dept Civil Engn,Fac Engn, Res Unit Data Sci & Digital Transformat, Pathum Thani 12120, Thailand
[4] Mien Trung Univ Civil Engn, Fac Civil Engn, Tuy Hoa, Phu Yen Provinc, Vietnam
[5] Thammasat Univ, Fac Engn, Dept Civil Engn,Thammasat Sch Engn, Res Unit Sci & Innovat Technol Civil Engn Infrastr, Pathum Thani 12120, Thailand
[6] King Mongkuts Univ Technol North Bangkok, Soil Engn Res Ctr, Dept Civil Engn, Bangkok 10800, Thailand
关键词
Random field; Stochastic analysis; Limit analysis; Uplift capacity; Pipeline; Machine learning; FORCE-DISPLACEMENT RESPONSE; BEARING CAPACITY; UNDRAINED STABILITY; LIMIT ANALYSIS; SOIL; TUNNEL; RESISTANCE; PIPES;
D O I
10.1007/s13369-024-09793-x
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
The uplift capacity of pipelines buried in clay is a critical aspect of their structural integrity, affecting their stability and performance under varying conditions. This study investigates the probabilistic solutions of pipeline stability considering the spatial variability of soil strength by integrating random field theory and adaptive finite element limit analysis, known as random adaptive finite element limit analysis (RAFELA). In this paper, RAFELA is carried out to derive the statistical characterizations of pipelines under uplift force. Several advanced regression machine learning techniques, namely, emotional neural network (ENN), the group method of data handling (GMDH), adaptive neuro-fuzzy inference system (ANFIS), and minimax probability machine regression (MPMR), have been used to develop surrogate models to assess the mean uplift capacity factor of pipelines buried in spatially random clay subjected to both horizontal and vertical forces. The dimensionless parameters utilized in the present study include the embedment depth ratio (H/D), overburden factor (gamma H/mu c), adhesion factor (alpha), inclination angle (beta), coefficient of variation (CoVc), and dimensionless correlation length (Theta c), where Monte Carlo simulations are employed to perform the stochastic analysis. In addition, four advanced regression machine learning models are also utilized to develop surrogate models for estimating the mean uplift capacity factor of pipelines. Based on the performances of all the machine learning models, the proposed GMDH model is the most accurate model, with R2=0.9772 for training and R2=0.9370 for the testing phase, followed by the MPMR, ANFIS, and ENN models. The REC curve demonstrates the GMDH model's superiority, showing lower AOC values (training: 0.1715, testing: 0.2274) followed by MPMR (training: 0.2163, testing =0.2491), ANFIS (training:0.2408, testing: 0.3263) and ENN (training: 0.3177, testing: 0.3595) models.
引用
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页数:28
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