4.6 Article

Biosorption of copper(II) ions by flax meal: Empirical modeling and process optimization by response surface methodology (RSM) and artificial neural network (ANN) simulation

Journal

ECOLOGICAL ENGINEERING
Volume 83, Issue -, Pages 364-379

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.ecoleng.2015.07.004

Keywords

Biosorption; Flax meal; Response surface methodology; Optimization; Empirical modeling; Artificial neural network

Funding

  1. European Union, European Social Fund
  2. Polish Ministry of Science and Higher Education for the Faculty of Chemistry of Wroclaw University of Technology [S40579/Z0307]

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In the present study, application of waste flax meal was investigated for the removal of copper(II) ions from aqueous solution. The effect of operating parameters such as metal ions concentration (20-200 ppm), biosorbent dosage (1-10 g/L) and solution pH (2-5) was modeled by both response surface methodology (RSM) and artificial neural network (ANN). This study compares central composite design (CCD), Box-Behnken design (BBD) and full factorial design (FFD) utility for modeling and optimization by response surface methodology. The best statistical predictability and accuracy resulted from CCD (R-2 = 0.997, MSE = 0.34). Maximum biosorption efficiency expressed as the sorption capacity, which was found to be 34.4 mg/g, at initial Cu2+ concentration of 200 ppm, biosorbent dosage of 1 g/L and initial solution pH of 5. The precision of the equation obtained by RSM was confirmed by the analysis of variance and calculation of correlation coefficient relating the predicted and the experimental values of biosorption efficiency. A feed-forward neural network with a topology optimized by response surface methodology was applied successfully for prediction of biosorption performance for the removal of Cu2+ ions by waste flax meal. The number of hidden neurons, the number of epochs, the adaptive value and the training goal were chosen for optimization. The multilayer perceptron with three neurons in one input layer, twenty two neurons in one hidden layer and one neuron in one output layer were required to build the model. The neural network turned out to be more accurate than RSM model in the prediction of Cu2+ biosorption by flax meal. The novelty of this paper is application of response surface methodology in order to optimize artificial neural network topology. The research on modeling biosorption by RSM and ANN has been highly developed and new waste material flax meal as potential biosorbent has been proposed. (C) 2015 Elsevier B.V. All rights reserved.

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