Principal component analysis- adaptive neuro-fuzzy inference system modeling and genetic algorithm optimization of adsorption of methylene blue by activated carbon derived from Pistacia khinjuk.

2013 
Abstract In the present study, activated carbon (AC) simply derived from Pistacia khinjuk and characterized using different techniques such as SEM and BET analysis. This new adsorbent was used for methylene blue (MB) adsorption. Fitting the experimental equilibrium data to various isotherm models shows the suitability and applicability of the Langmuir model. The adsorption mechanism and rate of processes was investigated by analyzing time dependency data to conventional kinetic models and it was found that adsorption follow the pseudo-second-order kinetic model. Principle component analysis (PCA) has been used for preprocessing of input data and genetic algorithm optimization have been used for prediction of adsorption of methylene blue using activated carbon derived from P. khinjuk . In our laboratory various activated carbon as sole adsorbent or loaded with various nanoparticles was used for removal of many pollutants ( Ghaedi et al., 2012 ). These results indicate that the small amount of proposed adsorbent (1.0 g) is applicable for successful removal of MB (RE>98%) in short time (45 min) with high adsorption capacity (48–185 mg g −1 ).
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