Elucidating the effect of process parameters on the production of hydrogen-rich syngas by biomass and coal Co-gasification techniques: A multi-criteria modeling approach

被引:44
作者
Bahadar, Ali [1 ]
Kanthasamy, Ramesh [1 ]
Sait, Hani Hussain [2 ]
Zwawi, Mohammed [2 ]
Algarni, Mohammed [2 ]
Ayodele, Bamidele Victor [3 ]
Cheng, Chin Kui [4 ]
Wei, Lim Jun [5 ]
机构
[1] King Abdulaziz Univ, Fac Engn Rabigh, Chem & Mat Engn Dept, Rabigh 21911, Saudi Arabia
[2] King Abdulaziz Univ, Fac Engn Rabigh, Mech Engn Dept, Rabigh 21911, Saudi Arabia
[3] Univ Tenaga Nas, Inst Energy Policy & Res, Jalan IKRAM UNITEN, Kajang 43000, Malaysia
[4] Khalifa Univ, Dept Chem Engn, POB 127788, Abu Dhabi, U Arab Emirates
[5] Univ Teknol Petronas, HiCoE Ctr Biofuel & Biochem Res, Seri Iskandar, Perak, Malaysia
关键词
Artificial neural network; Support vector machine; Gaussian process regression; Gasification; Hydrogen-rich syngas; Machine learning; PALM OIL; STEAM GASIFICATION; ENERGY-CONSUMPTION; GAS-COMPOSITION; WASTE; OPTIMIZATION; CONVERSION; PREDICTION; REGRESSION; RESIDUES;
D O I
10.1016/j.chemosphere.2021.132052
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The thermochemical processes such as gasification and co-gasification of biomass and coal are promising route for producing hydrogen-rich syngas. However, the process is characterized with complex reactions that pose a tremendous challenge in terms of controlling the process variables. This challenge can be overcome using appropriate machine learning algorithm to model the nonlinear complex relationship between the predictors and the targeted response. Hence, this study aimed to employ various machine learning algorithms such as regression models, support vector machine regression (SVM), gaussian processing regression (GPR), and artificial neural networks (ANN) for modeling hydrogen-rich syngas production by gasification and co-gasification of biomass and coal. A total of 12 machine learning algorithms which comprises the regression models, SVM, GPR, and ANN were configured, trained using 124 datasets. The performances of the algorithms were evaluated using the co-efficient of determination (R-2), root mean square error (RMSE), mean square error (MSE), and mean absolute error (MAE). In all cases, the ANN algorithms offer superior performances and displayed robust predictions of the hydrogen-rich syngas from the co-gasification processes. The R-2 of both the Levenberg-Marquardt-and Bayesian Regularization-trained ANN obtained from the prediction of the hydrogen-rich syngas was found to be within 0.857-0.998 with low prediction errors. The sensitivity analysis to determine the effect of the process parameters on the model output revealed that all the parameters showed a varying level of influence. In most of the pro -cesses, the gasification temperature was found to have the most significant influence on the model output.
引用
收藏
页数:12
相关论文
共 43 条
[1]  
Abbas Ahmed K., 2019, Egyptian Journal of Petroleum, V28, P339, DOI [10.1016/j.ejpe.2019.06.006, 10.1016/j.ejpe.2019.06.006]
[2]  
Al Haiqi Omer, 2020, Journal of Physics: Conference Series, V1529, DOI [10.1088/1742-6596/1529/5/052058, 10.1088/1742-6596/1529/5/052058]
[3]   Artificial Neural Network Modeling of Thermo-catalytic Methane Decomposition for Hydrogen Production [J].
Alsaffar, May Ali ;
Ghany, Mohamed Abdel Rahman Abdel ;
Ali, Jamal Manee ;
Ayodele, Bamidele Victor ;
Mustapa, Siti Indati .
TOPICS IN CATALYSIS, 2021, 64 (5-6) :456-464
[4]   Evaluation of thermochemical routes for hydrogen production from biomass: A review [J].
Arregi, Aitor ;
Amutio, Maider ;
Lopez, Gartzen ;
Bilbao, Javier ;
Olazar, Martin .
ENERGY CONVERSION AND MANAGEMENT, 2018, 165 :696-719
[5]   Backpropagation neural networks modelling of photocatalytic degradation of organic pollutants using TiO2-based photocatalysts [J].
Ayodele, Bamidele Victor ;
Alsaffar, May Ali ;
Mustapa, Siti Indati ;
Vo, Dai-Viet N. .
JOURNAL OF CHEMICAL TECHNOLOGY AND BIOTECHNOLOGY, 2020, 95 (10) :2739-2749
[6]   A Mini-Review on Hydrogen-Rich Syngas Production by Thermo-Catalytic and Bioconversion of Biomass and Its Environmental Implications [J].
Ayodele, Bamidele Victor ;
Mustapa, Siti Indati ;
Abdullah, Tuan Ab Rashid Bin Tuan ;
Salleh, Siti Fatihah .
FRONTIERS IN ENERGY RESEARCH, 2019, 7
[7]   Artificial neural network based modeling of biomass gasification in fixed bed downdraft gasifiers [J].
Baruah, Dipal ;
Baruah, D. C. ;
Hazarika, M. K. .
BIOMASS & BIOENERGY, 2017, 98 :264-271
[8]   Gaussian Process Regression for Predictive But Interpretable Machine Learning Models: An Example of Predicting Mental Workload across Tasks [J].
Caywood, Matthew S. ;
Roberts, Daniel M. ;
Colombe, Jeffrey B. ;
Greenwald, Hal S. ;
Weiland, Monica Z. .
FRONTIERS IN HUMAN NEUROSCIENCE, 2017, 10
[9]   Biological treatment of anaerobically digested palm oil mill effluent (POME) using a Lab-Scale Sequencing Batch Reactor (SBR) [J].
Chan, Yi Jing ;
Chong, Mei Fong ;
Law, Chung Lim .
JOURNAL OF ENVIRONMENTAL MANAGEMENT, 2010, 91 (08) :1738-1746
[10]   Gasification of torrefied oil palm biomass in a fixed-bed reactor: Effects of gasifying agents on product characteristics [J].
Chew, Jiuan Jing ;
Soh, Megan ;
Sunarso, Jaka ;
Yong, Siek-Ting ;
Doshi, Veena ;
Bhattacharya, Sankar .
JOURNAL OF THE ENERGY INSTITUTE, 2020, 93 (02) :711-722