Effectiveness of predicting tunneling-induced ground settlements using machine learning methods with small datasets

被引:0
|
作者
Linan Liu [1 ]
Wendy Zhou [1 ]
Marte Gutierrez [2 ]
机构
[1] Department of Geology and Geological Engineering, Colorado School of Mines
[2] Department of Civil and Environmental Engineering, Colorado School of Mines
关键词
D O I
暂无
中图分类号
U455.4 [施工方法]; P642.26 [地面沉降];
学科分类号
0814 ; 081406 ;
摘要
Prediction of tunneling-induced ground settlements is an essential task, particularly for tunneling in urban settings. Ground settlements should be limited within a tolerable threshold to avoid damages to aboveground structures. Machine learning(ML) methods are becoming popular in many fields, including tunneling and underground excavations, as a powerful learning and predicting technique. However, the available datasets collected from a tunneling project are usually small from the perspective of applying ML methods. Can ML algorithms effectively predict tunneling-induced ground settlements when the available datasets are small? In this study, seven ML methods are utilized to predict tunneling-induced ground settlement using 14 contributing factors measured before or during tunnel excavation. These methods include multiple linear regression(MLR), decision tree(DT), random forest(RF), gradient boosting(GB),support vector regression(SVR), back-propagation neural network(BPNN), and permutation importancebased BPNN(PI-BPNN) models. All methods except BPNN and PI-BPNN are shallow-structure ML methods. The effectiveness of these seven ML approaches on small datasets is evaluated using model accuracy and stability. The model accuracy is measured by the coefficient of determination(R~2) of training and testing datasets, and the stability of a learning algorithm indicates robust predictive performance. Also,the quantile error(QE) criterion is introduced to assess model predictive performance considering underpredictions and overpredictions. Our study reveals that the RF algorithm outperforms all the other models with the highest model prediction accuracy(0.9) and stability(3.02 × 10-27). Deep-structure ML models do not perform well for small datasets with relatively low model accuracy(0.59) and stability(5.76).The PI-BPNN architecture is proposed and designed for small datasets, showing better performance than typical BPNN. Six important contributing factors of ground settlements are identified, including tunnel depth, the distance between tunnel face and surface monitoring points(DTM), weighted average soil compressibility modulus(ACM), grouting pressure, penetrating rate and thrust force.
引用
下载
收藏
页码:1028 / 1041
页数:14
相关论文
共 50 条
  • [41] Predicting and interpreting oxide glass properties by machine learning using large datasets
    Cassar, R. Daniel
    Mastelini, Saulo Martiello
    Botari, Tiago
    Alcobaca, Edesio
    de Carvalho, C. P. L. F. Andre
    Zanotto, D. Edgar
    CERAMICS INTERNATIONAL, 2021, 47 (17) : 23958 - 23972
  • [42] A stacking machine learning model for predicting pullout capacity of small ground anchors
    Lin Li
    Linlong Zuo
    Guangfeng Wei
    Shouming Jiang
    Jian Yu
    AI in Civil Engineering, 2024, 3 (1):
  • [43] Using machine learning to predict concrete's strength: learning from small datasets
    Ouyang, Boya
    Song, Yu
    Li, Yuhai
    Wu, Feishu
    Yu, Huizi
    Wang, Yongzhe
    Yin, Zhanyuan
    Luo, Xiaoshu
    Sant, Gaurav
    Bauchy, Mathieu
    ENGINEERING RESEARCH EXPRESS, 2021, 3 (01):
  • [44] Intelligent Prediction of Maximum Ground Settlement Induced by EPB Shield Tunneling Using Automated Machine Learning Techniques
    Hussaine, Syed Mujtaba
    Mu, Linlong
    MATHEMATICS, 2022, 10 (24)
  • [45] Feature selection and predicting chemotherapy-induced ulcerative mucositis using machine learning methods
    Satheeshkumar, Poolakkad S.
    El-Dallal, Mohammed
    Mohan, Minu P.
    INTERNATIONAL JOURNAL OF MEDICAL INFORMATICS, 2021, 154
  • [46] Predicting crop yields in Senegal using machine learning methods
    Sarr, Alioune Badara
    Sultan, Benjamin
    INTERNATIONAL JOURNAL OF CLIMATOLOGY, 2023, 43 (04) : 1817 - 1838
  • [47] PREDICTING PKA USING A COMBINATION OF QUANTUM AND MACHINE LEARNING METHODS
    Hunt, Peter
    Hosseini-Gerami, Layla
    Chrien, Tomas
    Segall, Matthew
    DRUG METABOLISM AND PHARMACOKINETICS, 2020, 35 (01) : S60 - S60
  • [48] Predicting the Duration of Forest Fires Using Machine Learning Methods
    Kopitsa, Constantina
    Tsoulos, Ioannis G.
    Charilogis, Vasileios
    Stavrakoudis, Athanassios
    Future Internet, 2024, 16 (11):
  • [49] PREDICTING CORONAL MASS EJECTIONS USING MACHINE LEARNING METHODS
    Bobra, M. G.
    Ilonidis, S.
    ASTROPHYSICAL JOURNAL, 2016, 821 (02):
  • [50] Predicting Pavement Structural Condition Using Machine Learning Methods
    Ahmed, Nazmus Sakib
    Huynh, Nathan
    Gassman, Sarah
    Mullen, Robert
    Pierce, Charles
    Chen, Yuche
    SUSTAINABILITY, 2022, 14 (14)