Predicting maximum scour depth at sluice outlet: a comparative study of machine learning models and empirical equations

被引:6
|
作者
Le, Xuan-Hien [1 ]
Thu Hien, Le Thi [1 ]
机构
[1] Thuyloi Univ, Fac Water Resources Engn, 175 Tay Son, Hanoi 10000, Vietnam
来源
关键词
scour depth prediction; sensitivity analysis; monte carlo techniques; uncertainty quantification; CatBoost; SHAP value; LOCAL SCOUR; DOWNSTREAM; APRON; EROSION;
D O I
10.1088/2515-7620/ad1f94
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Estimating the maximum scour depth of sluice outlets is pivotal in hydrological engineering, directly influencing the safety and efficiency of water infrastructure. This research compared traditional empirical formulas with advanced machine learning (ML) algorithms, including RID, SVM, CAT, and XGB, utilizing experimental datasets from prior studies. Performance statistics highlighted the efficacy of the ML algorithms over empirical formulas, with CAT and XGB leading the way. Specifically, XGB demonstrated superiority with a correlation coefficient (CORR) of 0.944 and a root mean square error (RMSE) of 0.439. Following closely, the CAT model achieved a CORR of 0.940, and SVM achieved 0.898. For empirical formulas, although CORR values up to 0.816 and RMSE values of 0.799 can be obtained, these numbers are still lower than most ML algorithms. Furthermore, a sensitivity analysis underscored the densimetric Froude number (Fd) as the most crucial factor in ML models, with influences ranging from 0.839 in RID to 0.627 in SVM. Uncertainty in ML model estimates was further quantified using the Monte Carlo technique with 1,000 simulations on testing datasets. CAT and XGB have shown more stability than the other models in providing estimates with mean CORRs of 0.937 and 0.946, respectively. Their 95% confidence intervals (CIs) are [0.929-0.944] for CAT and [0.933-0.954] for XGB. These results demonstrated the potential of ML algorithms, particularly CAT and XGB, in predicting the maximum scour depth. Although these models offer high accuracy and higher 95% CI than others, the empirical formulas retain their relevance due to their simplicity and quick computation, which may still make them favored in certain scenarios.
引用
收藏
页数:15
相关论文
共 50 条
  • [21] A Comparative Study of Machine Learning Models for Predicting Meteorological Data in Agricultural Applications
    Suljug, Jelena
    Spisic, Josip
    Grgic, Kresimir
    Zagar, Drago
    ELECTRONICS, 2024, 13 (16)
  • [22] Comparative Study of Machine Learning Models and Distributed Runoff Models for Predicting Flood Water Level
    Kubo T.
    Okazaki T.
    IEIE Transactions on Smart Processing and Computing, 2023, 12 (03): : 215 - 222
  • [23] Machine Learning-based Models for Predicting the Penetration Depth of Concrete
    Li M.
    Wu H.
    Dong H.
    Ren G.
    Zhang P.
    Huang F.
    Binggong Xuebao/Acta Armamentarii, 2023, 44 (12): : 3771 - 3782
  • [24] Predicting groundwater depth fluctuations using deep learning, extreme learning machine and Gaussian process: a comparative study
    Kumar, Deepak
    Roshni, Thendiyath
    Singh, Anshuman
    Jha, Madan Kumar
    Samui, Pijush
    EARTH SCIENCE INFORMATICS, 2020, 13 (04) : 1237 - 1250
  • [25] Predicting groundwater depth fluctuations using deep learning, extreme learning machine and Gaussian process: a comparative study
    Deepak Kumar
    Thendiyath Roshni
    Anshuman Singh
    Madan Kumar Jha
    Pijush Samui
    Earth Science Informatics, 2020, 13 : 1237 - 1250
  • [26] Prediction of scour depth around bridge abutments with different shapes using machine learning models
    Deng, Yangyu
    Liu, Yakun
    Zhang, Di
    Cao, Ze
    PROCEEDINGS OF THE INSTITUTION OF CIVIL ENGINEERS-WATER MANAGEMENT, 2023, 177 (05) : 308 - 326
  • [27] A Comparative Analysis of Machine Learning Models: A Case Study in Predicting Chronic Kidney Disease
    Iftikhar, Hasnain
    Khan, Murad
    Khan, Zardad
    Khan, Faridoon
    Alshanbari, Huda M.
    Ahmad, Zubair
    SUSTAINABILITY, 2023, 15 (03)
  • [28] Predicting soot formation in fossil fuels: A comparative study of regression and machine learning models
    Lawal, Ridhwan
    Farooq, Wasif
    Abdulraheem, Abdulazeez
    Jameel, Abdul Gani Abdul
    DIGITAL CHEMICAL ENGINEERING, 2024, 12
  • [29] Predicting Kereh River's Water Quality: A comparative study of machine learning models
    Nasaruddin, Norashikin
    Ahmad, Afida
    Zakaria, Shahida Farhan
    Ul-Saufie, Ahmad Zia
    Osman, Mohamed Syazwan
    ENVIRONMENT-BEHAVIOUR PROCEEDINGS JOURNAL, 2023, 8 (26): : 213 - 219
  • [30] Predicting Kereh River's Water Quality: A comparative study of machine learning models
    Nasaruddin, Norashikin
    Ahmad, Afida
    Zakaria, Shahida Farhan
    Ul-Saufie, Ahmad Zia
    Osman, Mohamed Syazwan
    ENVIRONMENT-BEHAVIOUR PROCEEDINGS JOURNAL, 2023, 8 : 213 - 219