Application of gene expression programming, artificial neural network and multilinear regression in predicting hydrochar physicochemical properties

被引:23
|
作者
Abdulsalam, Jibril [1 ]
Lawal, Abiodun Ismail [2 ,3 ]
Setsepu, Ramadimetja Lizah [1 ]
Onifade, Moshood [4 ]
Bada, Samson [1 ]
机构
[1] Univ Witwatersrand, Fac Engn & Built Environm, Sch Chem & Met Engn, DSI NRF Clean Coal Technol Res Grp, ZA-2050 Johannesburg, South Africa
[2] Inha Univ, Dept Energy Resources Engn, Incheon, South Korea
[3] Fed Univ Technol Akure, Dept Min Engn, Akure, Nigeria
[4] Univ Namibia, Dept Min & Met Engn, Windhoek, Namibia
基金
新加坡国家研究基金会;
关键词
Artificial neural network; Biomass; Gene expression programming; Higher heating value; Hydrochars; Hydrothermal carbonization; HIGHER HEATING VALUE; HYDROTHERMAL CARBONIZATION; COMBUSTION CHARACTERISTICS; BIOMASS FUELS; SOLID-FUEL; CALORIFIC VALUE; PROXIMATE; TEMPERATURE; RESIDUES; BIOCHAR;
D O I
10.1186/s40643-020-00350-6
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
Globally, the provision of energy is becoming an absolute necessity. Biomass resources are abundant and have been described as a potential alternative source of energy. However, it is important to assess the fuel characteristics of the various available biomass sources. Soft computing techniques are presented in this study to predict the mass yield (MY), energy yield (EY), and higher heating value (HHV) of hydrothermally carbonized biomass using Gene Expression Programming (GEP), multiple-input single output-artificial neural network (MISO-ANN), and Multilinear regression (MLR). The three techniques were compared using statistical performance metrics. The coefficient of determination (R-2), mean absolute error (MAE) and mean bias error (MBE) were used to evaluate the performance of the models. The MISO-ANN with 5-10 to 10-1 and 5-15-15-1 network architectures provided the most satisfactory performance of the three proposed models (R-2 = 0.976, 0.955, 0.996; MAE = 2.24, 2.11, 0.93; MBE = 0.16, 0.37, 0.12) for MY, EY and HHV, respectively. The GEP technique's ability to predict hydrochar properties based on the input parameters was found to be satisfactory, while MLR provided an unsatisfactory predictive model. Sensitivity analysis was conducted, and the analysis revealed that volatile matter (VM) and temperature (Temp) have more influence on the MY, EY, and HHV.
引用
收藏
页数:22
相关论文
共 50 条
  • [41] Artificial Neural Network and a Nonlinear Regression Model for Predicting Electrical Pole Crash
    Montt, C.
    Castro, J. C.
    Valencia, A.
    Oddershede, A.
    Quezada, L.
    INTERNATIONAL JOURNAL OF COMPUTERS COMMUNICATIONS & CONTROL, 2020, 15 (05) : 1 - 9
  • [42] Predicting shrimp growth: Artificial neural network versus nonlinear regression models
    Yu, R
    Leung, P
    Bienfang, P
    AQUACULTURAL ENGINEERING, 2006, 34 (01) : 26 - 32
  • [43] Predicting cost deviation in reconstruction projects: Artificial neural network versus regression
    Attalla, M
    Hegazy, T
    JOURNAL OF CONSTRUCTION ENGINEERING AND MANAGEMENT-ASCE, 2003, 129 (04): : 405 - 411
  • [44] Predicting the properties of needlepunched nonwovens using Artificial Neural Network
    Rawal, Amit
    Majumdar, Abhijit
    Anand, Subhash
    Shah, Tahir
    Journal of Applied Polymer Science, 2009, 112 (06): : 3575 - 3581
  • [45] Predicting Gray Cast Iron Properties with Artificial Neural Network
    Yao, R. B.
    Tang, C. X.
    Sun, G. X.
    Transactions of the American Foundrymen's Society, (104):
  • [46] Predicting the Properties of Needlepunched Nonwovens Using Artificial Neural Network
    Rawal, Amit
    Majumdar, Abhijit
    Anand, Subhash
    Shah, Tahir
    JOURNAL OF APPLIED POLYMER SCIENCE, 2009, 112 (06) : 3575 - 3581
  • [47] On the evaluation of crude oil oxidation during thermogravimetry by generalised regression neural network and gene expression programming: application to thermal enhanced oil recovery
    Mohammadi, Mohammad-Reza
    Hemmati-Sarapardeh, Abdolhossein
    Schaffie, Mahin
    Husein, Maen M.
    Karimian, Milad
    Ranjbar, Mohammad
    COMBUSTION THEORY AND MODELLING, 2021, 25 (07) : 1268 - 1295
  • [48] Physicochemical properties and pyrolysis behavior of petcoke with artificial neural network modeling
    Lee, Byoung-Hwa
    Trinh, Viet Thieu
    Moon, Hyeong-Bin
    Lee, Ji-Hwan
    Kim, Hyeong-Tae
    Lee, Jin-Wook
    Jeon, Chung-Hwan
    FUEL, 2023, 331
  • [49] Comparison of Artificial Neural Network and Multiple Regression Analysis Techniques in Predicting the Mechanical Properties of A356 Alloy
    Emadi, Daryoush
    Mahfoud, Musbah
    11TH INTERNATIONAL CONFERENCE ON THE MECHANICAL BEHAVIOR OF MATERIALS (ICM11), 2011, 10
  • [50] Gene expression modelling with the use of Boolean network and artificial neural network
    Kubik, T
    Bogunia-Kubik, K
    Sugisaka, M
    PROCEEDINGS OF THE 2002 2ND IEEE CONFERENCE ON NANOTECHNOLOGY, 2002, : 157 - 160