Title :
Neural Network Modeling for Bio-enzymatic Degumming on Kenaf
Author :
Laijiu, Zheng ; Du Bing
Author_Institution :
Key Lab. of Textile Eng., Dalian Polytech. Univ., Dalian, China
Abstract :
In order to reduce chemical residues on kenaf fiber and solve the environmental pollution caused by traditional degumming methods, bio-enzymatic degumming on kenaf was proposed, and a neural network model was built to optimize the parameters during industrialized production. Pre-treatment of laboratory data was conducted through changes of scale and training samples were determined by equilibrium selection. The optimal process parameters were finally fixed by genetic algorithm: temperature is 34.11, pH value is 8, liquor ratio is 1: 37.61, time is 60 h, and enzyme consumption is 1.00 mL/10 g kenaf bast fiber. After verification by degumming experiments, the residual gum content and the weight-loss ratio was 10.9% and 19.8% respectively, obviously superior to the results of orthogonal experiments, and it could provide theoretical basis for industrialized degumming.
Keywords :
chemical analysis; environmental factors; enzymes; genetic algorithms; natural fibres; neural nets; textile fibres; textile industry; textile technology; bioenzymatic degumming; chemical residues; degumming experiments; degumming methods; environmental pollution; equilibrium selection; genetic algorithm; industrialized degumming; industrialized production; kenaf bast fiber; kenaf fiber; neural network modeling; optimal process parameters; residual gum content; weight-loss ratio; Chemical industry; Chemical products; Environmentally friendly manufacturing techniques; Genetic algorithms; Industrial pollution; Industrial training; Laboratories; Neural networks; Optimization methods; Production; Bio-degumming; Genetic algorithm; Kenaf; Neural network model;
Conference_Titel :
Natural Computation, 2009. ICNC '09. Fifth International Conference on
Conference_Location :
Tianjin
Print_ISBN :
978-0-7695-3736-8
DOI :
10.1109/ICNC.2009.29