Accurately Predicting Quartz Sand Thermal Conductivity Using Machine Learning and Grey-Box AI Models

被引:4
|
作者
Baghbani, Abolfazl [1 ]
Abuel-Naga, Hossam [2 ]
Shirkavand, Danial [3 ]
机构
[1] Deakin Univ, Sch Engn, Melbourne, Vic 3125, Australia
[2] La Trobe Univ, Dept Civil Engn, Melbourne, Vic 3086, Australia
[3] Amirkabir Univ Technol, Dept Civil Engn, Tehran 158754413, Iran
来源
GEOTECHNICS | 2023年 / 3卷 / 03期
关键词
soil thermal conductivity; artificial intelligence; grey-box model; sensitivity analysis; genetic programming; SOIL; CLASSIFICATION; DENSITY;
D O I
10.3390/geotechnics3030035
中图分类号
P5 [地质学];
学科分类号
0709 ; 081803 ;
摘要
The thermal conductivity of materials is a crucial property with diverse applications, particularly in engineering. Understanding soil thermal conductivity is crucial for designing efficient geothermal systems, predicting soil temperatures, and assessing soil contamination. This paper aimed to predict quartz sand thermal conductivity by using four mathematical models: multiple linear regression (MLR), artificial neural network (ANN), classification and regression random forest (CRRF), and genetic programming (GP). A grey-box AI method, GP, was used for the first time in this topic. Seven inputs affecting thermal conductivity were evaluated in the study, including sand porosity, degree of saturation, coefficient of uniformity, coefficient of curvature, mean particle size, and minimum and maximum void ratios. In predicting thermal conductivity, the MLR model performed poorly, with a coefficient of determination R2 = 0.737 and a mean absolute error MAE = 0.300. Both ANN models using the Levenberg-Marquardt algorithm and the Bayesian Regularization (BR) algorithm outperformed the MLR model with an accuracy of R2 = 0.916 and an error of MAE = 0.151. In addition, the CRRF model had the best accuracy of R2 = 0.993 and MAE = 0.045. In addition, GP showed acceptable performance in predicting sand thermal conductivity. The R2 and MAE values of GP were 0.986 and 0.063, respectively. This paper presents the best GP equation for evaluating other databases. Additionally, the porosity and saturation of the sand were found to have the greatest impact on the model results, while coefficients of curvature and uniformity had the least influence. Overall, the results of this study demonstrate that grey-box artificial intelligence models can be used to accurately predict quartz sand thermal conductivity.
引用
收藏
页码:638 / 660
页数:23
相关论文
共 50 条
  • [41] A framework for uncertainty quantification in building heat demand simulations using reduced-order grey-box energy models
    Shamsi, Mohammad Haris
    Ali, Usman
    Mangina, Eleni
    O'Donnell, James
    APPLIED ENERGY, 2020, 275
  • [42] Investigation of demand response potentials of residential air conditioners in smart grids using grey-box room thermal model
    Hu, Maomao
    Xiao, Fu
    Wang, Lingshi
    APPLIED ENERGY, 2017, 207 : 324 - 335
  • [43] Predicting Thermal Properties of Crystals Using Machine Learning
    Tawfik, Sherif Abdulkader
    Isayev, Olexandr
    Spencer, Michelle J. S.
    Winkler, David A.
    ADVANCED THEORY AND SIMULATIONS, 2020, 3 (02)
  • [44] Predicting Asthma Exacerbations Using Machine Learning Models
    Turcatel, Gianluca
    Xiao, Yi
    Caveney, Scott
    Gnacadja, Gilles
    Kim, Julie
    Molfino, Nestor A.
    ADVANCES IN THERAPY, 2025, 42 (01) : 362 - 374
  • [45] Thermal conductivity of Water-based nanofluids: Prediction and comparison of models using machine learning
    Sahooli, M.
    Sabbaghi, S.
    Maleki, R.
    Nematollahi, M. M.
    INTERNATIONAL JOURNAL OF NANO DIMENSION, 2014, 5 (01) : 47 - 55
  • [46] Machine learning models for the lattice thermal conductivity prediction of inorganic materials
    Chen, Lihua
    Huan Tran
    Batra, Rohit
    Kim, Chiho
    Ramprasad, Rampi
    COMPUTATIONAL MATERIALS SCIENCE, 2019, 170
  • [47] Predicting and Understanding Emergency Shutdown Durations Level of Pipeline Incidents Using Machine Learning Models and Explainable AI
    Asaye, Lemlem
    Le, Chau
    Huang, Ying
    Le, Trung Q.
    Yadav, Om Prakash
    Le, Tuyen
    PROCESSES, 2025, 13 (02)
  • [48] Transfer Learning for the Prediction of Energy Performance of Water-Cooled Electric Chillers: Grey-Box Models Versus Deep Neural Network (DNN) Models †
    Dou, Hongwen
    Zmeureanu, Radu
    Energies, 2024, 17 (23)
  • [49] Machine Learning Models for Predicting Thermal Properties of Radiative Cooling Aerogels
    Yuan, Chengce
    Shi, Yimin
    Ba, Zhichen
    Liang, Daxin
    Wang, Jing
    Liu, Xiaorui
    Xu, Yabei
    Liu, Junreng
    Xu, Hongbo
    GELS, 2025, 11 (01)
  • [50] Semi-parametric modelling of sun position dependent solar gain using B-splines in grey-box models
    Rasmussen, Christoffer
    Frolke, Linde
    Bacher, Peder
    Madsen, Henrik
    Rode, Carsten
    SOLAR ENERGY, 2020, 195 : 249 - 258