Modeling of Sulfite Concentration, Particle Size, and Reaction Time in Lignosulfonate Production from Barley Straw Using Response Surface Methodology and Artificial Neural Network

被引:5
|
作者
Guadalupe Serna-Diaz, Maria [1 ]
Arana-Cuenca, Ainhoa [1 ]
Medina-Marin, Joselito [2 ]
Carlos Seck-Tuoh-Mora, Juan [2 ]
Mercado-Flores, Yuridia [1 ]
Jimenez-Gonzalez, Angelica [1 ]
Tellez-Jurado, Alejandro [1 ]
机构
[1] Polytech Univ Pachuca, Mol Microbiol Lab, Car Pachuca Ciudad Sahagun Km 20, Zempoala 43830, Hidalgo, Mexico
[2] Autonomous Univ Hidalgo State, Dept Engn, Carr Pachuca Tulancingo Km 4-5, Mineral De La Reforma 42184, Hidalgo, Mexico
来源
BIORESOURCES | 2016年 / 11卷 / 04期
关键词
Delignification; Straw; Response surface methodology; Artificial neural networks; ENZYMATIC-HYDROLYSIS; AQUEOUS-SOLUTION; WHEAT-STRAW; ADSORPTION; OPTIMIZATION; DELIGNIFICATION; PRETREATMENT; CONVERSION; MEMBRANE; ALKALINE;
D O I
10.15376/biores.11.4.9219-9230
中图分类号
TB3 [工程材料学]; TS [轻工业、手工业、生活服务业];
学科分类号
0805 ; 080502 ; 0822 ;
摘要
Barley straw is a lignocellulosic biomass that can be used to obtain value-added products for industrial applications. Barley straw hydrolysis with sodium sulfite facilitates the production of lignosulfonates. In this work, the delignification process of barley straw by solubilizing lignin through sulfite method was studied. Response surface methodology and artificial neural network were used to develop predictive models for simulation and optimization of delignification process of barley straw. The influence of parameters over sulfite concentration (1.0 to 10.0%), particle size (8 to 20), and reaction time (30 to 90 min) on total percentage of solubilized material was investigated through a three level three factor (33) full factorial central composite design with the help of Matlab (R) ver. 8.1. The results show that particle size and sulfite concentration have the most significant effect on delignification process. Both techniques, response surface methodology and artificial neural networks, predicted the lignosulfonate yield adequately, although the artificial neural network technique produced a better fit (R-2 = 0.9825) against the response surface methodology (R-2 = 0.9290). Based on these findings, this study can be used as a guide to forecast the potential production of lignosulfonates from barley straw using different experimental conditions.
引用
收藏
页码:9219 / 9230
页数:12
相关论文
共 50 条
  • [41] Modeling particle size in the dispersion polymerization of styrene using artificial neural network and genetic algorithm
    Alireza Mahjub
    Colloid and Polymer Science, 2016, 294 : 1833 - 1843
  • [42] Modeling particle size in the dispersion polymerization of styrene using artificial neural network and genetic algorithm
    Mahjub, Alireza
    COLLOID AND POLYMER SCIENCE, 2016, 294 (11) : 1833 - 1843
  • [43] Artificial neural network and response surface methodology for modeling oil content in produced water from an Iraqi oil field
    Alardhi, Saja Mohsen
    Jabar, Noor Mohsen
    Breig, Sura Jasem Mohammed
    Hadi, Ahmed Abdulrazzaq
    Salman, Ali Dawood
    Al Saedi, Laith Majeed
    Khadium, Maytham Khalaf
    Showeel, Hamza Abbas
    Malak, Haydar Muhamad
    Mohammed, Malik M.
    Cuong Le, Phuoc
    WATER PRACTICE AND TECHNOLOGY, 2024, 19 (08) : 3330 - 3349
  • [44] Response surface methodology and artificial neural network modeling as predictive tools for phenolic compounds recovery from olive pomace
    Silva, Ana Rita
    Ayuso, Manuel
    Oludemi, Taofiq
    Goncalves, Alexandre
    Melgar, Bruno
    Barros, Lillian
    SEPARATION AND PURIFICATION TECHNOLOGY, 2024, 330
  • [45] Modeling daily dissolved oxygen concentration using modified response surface method and artificial neural network: a comparative study
    Keshtegar, Behrooz
    Heddam, Salim
    NEURAL COMPUTING & APPLICATIONS, 2018, 30 (10): : 2995 - 3006
  • [46] Modeling daily dissolved oxygen concentration using modified response surface method and artificial neural network: a comparative study
    Behrooz Keshtegar
    Salim Heddam
    Neural Computing and Applications, 2018, 30 : 2995 - 3006
  • [47] Extraction of phenolic compounds from cocoa shell: Modeling using response surface methodology and artificial neural networks
    Rebollo-Hernanz, Miguel
    Canas, Silvia
    Taladrid, Diego
    Segovia, Angela
    Bartolome, Begona
    Aguilera, Yolanda
    Martin-Cabrejas, Maria A.
    SEPARATION AND PURIFICATION TECHNOLOGY, 2021, 270
  • [48] Electrolytic biodiesel production from spent coffee grounds: Optimization through response surface methodology and artificial neural network
    Annal, Umaiyambika Neduvel
    Vaithiyanathan, R.
    Natarajan, Arunodhaya
    Rajadurai, Vijayalakshmi
    Kumar, Paskalis Sahaya Murphin
    Li, Yuan-Yao
    JOURNAL OF THE TAIWAN INSTITUTE OF CHEMICAL ENGINEERS, 2024, 165
  • [49] Removal of COD and color from textile industrial wastewater using wheat straw activated carbon: an application of response surface and artificial neural network modeling
    Somya Agarwal
    Ajit Pratap Singh
    Sudheer Mathur
    Environmental Science and Pollution Research, 2023, 30 : 41073 - 41094
  • [50] Enhanced biodiesel production from wet microalgae biomass optimized via response surface methodology and artificial neural network
    Muhammad, Gul
    Ngtcha, Ange Douglas Potchamyou
    Lv, Yongkun
    Xiong, Wenlong
    El-Badry, Yaser A.
    Asmatulu, Eylem
    Xu, Jingliang
    Alam, Md Asraful
    RENEWABLE ENERGY, 2022, 184 : 753 - 764