Performance evaluation of artificial neural network coupled with generic algorithm and response surface methodology in modeling and optimization of biodiesel production process parameters from shea tree (Vitellaria paradoxa) nut butter

被引:116
作者
Betiku, Eriola [1 ]
Okunsolawo, Samuel S. [1 ]
Ajala, Sheriff O. [1 ]
Odedele, Olatunde S. [1 ]
机构
[1] Obafemi Awolowo Univ, Dept Chem Engn, Biochem Engn Lab, Ife 220005, Osun State, Nigeria
关键词
Shea butter; Biodiesel; Transesterification; Artificial neural network; Response surface methodology; Optimization; OIL; PREDICTION;
D O I
10.1016/j.renene.2014.11.049
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
This work investigated the potential of shea butter oil (SBO) as feedstock for synthesis of biodiesel. Due to high free fatty acid (FFA) of SBO used, response surface methodology (RSM) was employed to model and optimize the pretreatment step while its conversion to biodiesel was modeled and optimized using RSM and artificial neural network (ANN). The acid value of the SBO was reduced to 1.19 mg KOH/g with oil/ methanol molar ratio of 3.3, H2SO4 of 0.15 v/v, time of 60 min and temperature of 45 degrees C. Optimum values predicted for the transesterification reaction by RSM were temperature of 90 degrees C, KOH of 0.6 w/v, oil/ methanol molar ratio of 3.5, and time of 30 mm with actual shea butter oil biodiesel (SBOB) yield of 99.65% (w/w). ANN combined with generic algorithm gave the optimal condition as temperature of 82 degrees C, KOH of 0.40 w/v, oil/methanol molar ratio of 2.62 and time of 30 min with actual SBOB yield of 99.94% (w/w). Coefficient of determination (R-2) and absolute average deviation (AAD) of the models were 0.9923, 0.83% (RSM) and 0.9991, 0.15% (ANN), which demonstrated that ANN model was more efficient than RSM model. Properties of SBOB produced were within biodiesel standard specifications. (C) 2014 Elsevier Ltd. All rights reserved.
引用
收藏
页码:408 / 417
页数:10
相关论文
共 20 条
[1]  
Alander J., 2004, LIPID TECHNOL, V16, P202
[2]   Modeling and optimization II: Comparison of estimation capabilities of response surface methodology with artificial neural networks in a biochemical reaction [J].
Bas, Deniz ;
Boyaci, Ismail H. .
JOURNAL OF FOOD ENGINEERING, 2007, 78 (03) :846-854
[3]   Mathematical modeling and process parameters optimization studies by artificial neural network and response surface methodology: A case of non-edible neem (Azadirachta indica) seed oil biodiesel synthesis [J].
Betiku, Eriola ;
Omilakin, Oluwasesan Ropo ;
Ajala, Sheriff Olalekan ;
Okeleye, Adebisi Aminat ;
Taiwo, Abiola Ezekiel ;
Solomon, Bamidele Ogbe .
ENERGY, 2014, 72 :266-273
[4]   Methanolysis optimization of sesame (Sesamum indicum) oil to biodiesel and fuel quality characterization [J].
Betiku E. ;
Adepoju T.F. .
International Journal of Energy and Environmental Engineering, 2013, 4 (1) :1-8
[5]   Modeling and optimization of Thevetia peruviana (yellow oleander) oil biodiesel synthesis via Musa paradisiacal (plantain) peels as heterogeneous base catalyst: A case of artificial neural network vs. response surface methodology [J].
Betiku, Eriola ;
Ajala, Sheriff Olalekan .
INDUSTRIAL CROPS AND PRODUCTS, 2014, 53 :314-322
[6]  
Canakci M, 1999, T ASAE, V42, P1203, DOI 10.13031/2013.13285
[7]  
Christodoulou C., 2000, APPL NEURAL NETWORKS
[8]   A modeling study by response surface methodology and artificial neural network on culture parameters optimization for thermostable lipase production from a newly isolated thermophilic Geobacillus sp strain ARM [J].
Ebrahimpour, Afshin ;
Rahman, Raja Noor Zaliha Raja Abd ;
Ch'ng, Diana Hooi Ean ;
Basri, Mahiran ;
Salleh, Abu Bakar .
BMC BIOTECHNOLOGY, 2008, 8 (1)
[9]  
Eneh MCC, 2010, NAT SEM ORG FED MIN
[10]  
Enweremadu CC, 2010, INT AGROPHYS, V24, P29