A novel technique based on the improved firefly algorithm coupled with extreme learning machine (ELM-IFF) for predicting the thermal conductivity of soil

被引:109
作者
Kardani, Navid [1 ]
Bardhan, Abidhan [2 ]
Samui, Pijush [2 ]
Nazem, Majidreza [1 ]
Zhou, Annan [1 ]
Armaghani, Danial Jahed [3 ]
机构
[1] Royal Melbourne Inst Technol RMIT, Sch Engn, Discipline Civil & Infrastruct Engn, Melbourne, Vic 3001, Australia
[2] Natl Inst Technol Patna, Dept Civil Engn, Patna 800005, Bihar, India
[3] Univ Malaya, Fac Engn, Dept Civil Engn, Kuala Lumpur 50603, Malaysia
关键词
Thermal conductivity; Unsaturated soil; Firefly algorithm; Improved firefly algorithm; Metaheuristic optimisation; POROUS-MEDIA; MODEL;
D O I
10.1007/s00366-021-01329-3
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Thermal conductivity is a specific thermal property of soil which controls the exchange of thermal energy. If predicted accurately, the thermal conductivity of soil has a significant effect on geothermal applications. Since the thermal conductivity is influenced by multiple variables including soil type and mineralogy, dry density, and water content, its precise prediction becomes a challenging problem. In this study, novel computational approaches including hybridisation of two metaheuristic optimisation algorithms, i.e. firefly algorithm (FF) and improved firefly algorithm (IFF), with conventional machine learning techniques including extreme learning machine (ELM), adaptive neuro-fuzzy interface system (ANFIS) and artificial neural network (ANN), are proposed to predict the thermal conductivity of unsaturated soils. FF and IFF are used to optimise the internal parameters of the ELM, ANFIS and ANN. These six hybrid models are applied to the dataset of 257 soil cases considering six influential variables for predicting the thermal conductivity of unsaturated soils. Several performance parameters are used to verify the predictive performance and generalisation capability of the developed hybrid models. The obtained results from the computational process confirmed that ELM-IFF attained the best predictive performance with a coefficient of determination = 0.9615, variance account for = 96.06%, root mean square error = 0.0428, and mean absolute error = 0.0316 on the testing dataset (validation phase). The results of the models are also visualised and analysed through different approaches using Taylor diagrams, regression error characteristic curves and area under curve scores, rank analysis and a novel method called accuracy matrix. It was found that all the proposed hybrid models have a great ability to be considered as alternatives for empirical relevant models. The developed ELM-IFF model can be employed in the initial stages of any engineering projects for fast determination of thermal conductivity.
引用
收藏
页码:3321 / 3340
页数:20
相关论文
共 61 条
  • [1] Thermo-mechanical behaviour of energy piles
    Amatya, B. L.
    Soga, K.
    Bourne-Webb, P. J.
    Amis, T.
    Laloui, L.
    [J]. GEOTECHNIQUE, 2012, 62 (06): : 503 - 519
  • [2] A combination of the ICA-ANN model to predict air-overpressure resulting from blasting
    Armaghani, Danial Jahed
    Hasanipanah, Mahdi
    Mohamad, Edy Tonnizam
    [J]. ENGINEERING WITH COMPUTERS, 2016, 32 (01) : 155 - 171
  • [3] Evaluation of soil thermal conductivity models
    Barry-Macaulay, D.
    Bouazza, A.
    Wang, B.
    Singh, R. M.
    [J]. CANADIAN GEOTECHNICAL JOURNAL, 2015, 52 (11) : 1892 - 1900
  • [4] Bi J., 2003, P 20 INT C INT C MAC, P43
  • [5] A Comparative Study of Linear Stochastic with Nonlinear Daily River Discharge Forecast Models
    Bonakdari, Hossein
    Binns, Andrew D.
    Gharabaghi, Bahram
    [J]. WATER RESOURCES MANAGEMENT, 2020, 34 (11) : 3689 - 3708
  • [6] Lake Water-Level fluctuations forecasting using Minimax Probability Machine Regression, Relevance Vector Machine, Gaussian Process Regression, and Extreme Learning Machine
    Bonakdari, Hossein
    Ebtehaj, Isa
    Samui, Pijush
    Gharabaghi, Bahram
    [J]. WATER RESOURCES MANAGEMENT, 2019, 33 (11) : 3965 - 3984
  • [7] Bowers G.A., 2014, Geo-Congress 2014: Geo-characterization and Modeling for Sustainability, P2705
  • [8] Energy foundations and other thermo-active ground structures
    Brandl, H
    [J]. GEOTECHNIQUE, 2006, 56 (02): : 81 - 122
  • [9] Machine learning models for the lattice thermal conductivity prediction of inorganic materials
    Chen, Lihua
    Huan Tran
    Batra, Rohit
    Kim, Chiho
    Ramprasad, Rampi
    [J]. COMPUTATIONAL MATERIALS SCIENCE, 2019, 170
  • [10] Thermal conductivity of sands
    Chen, Shan Xiong
    [J]. HEAT AND MASS TRANSFER, 2008, 44 (10) : 1241 - 1246