Title of article :
Application of non-linear regression and soft computing techniques for modeling process of pollutant adsorption from industrial wastewaters
Author/Authors :
Aryafar, A Department of Mining Engineering - Faculty of Engineering - University of Birjand - Birjand, Iran , Mikaeil, R Department of Mining Engineering - Faculty of Engineering - Urmia University of Technology - Urmia, Iran , Jafarpour, A Department of Mining Engineering - Faculty of Engineering - Urmia University of Technology - Urmia, Iran , Doulati Ardejani, F School of Mining - College of Engineering - University of Tehran - Tehran, Iran , Shaffiee Haghshenas, S Young Researchers and Elite Club - Rasht Branch - Islamic Azad University - Rasht, Iran
Abstract :
The process of pollutant adsorption from industrial wastewaters is a multivariate
problem. This process is affected by many factors including the contact time (T), pH,
adsorbent weight (m), and solution concentration (ppm). The main target of this work is
to model and evaluate the process of pollutant adsorption from industrial wastewaters
using the non-linear multivariate regression and intelligent computation techniques. In
order to achieve this goal, 54 industrial wastewater samples gathered by Institute of
Color Science & Technology of Iran (ICSTI) were studied. Based on the laboratory
conditions, the data was divided into 4 groups (A-1, A-2, A-3, and A-4). For each group,
a non-linear regression model was made. The statistical results obtained showed that two
developed equations from the A-3 and A-4 groups were the best models with R2 being
0.84 and 0.74. In these models, the contact time and solution concentration were the
main effective factors influencing the adsorption process. The extracted models were
validated using the t-test and F-value test. The hybrid PSO-based ANN model (particle
swarm optimization and artificial neural network algorithms) was constructed for
modelling the pollutant adsorption process under different laboratory conditions. Based
on this hybrid modeling, the performance indices were estimated. The hybrid model
results showed that the best value belonged to the data group A-4 with R2 of 0.91. Both
the non-linear regression and hybrid PSO-ANN models were found to be helpful tools
for modeling the process of pollutant adsorption from industrial wastewaters.
Keywords :
Non-Linear Regression , Intelligent Computation , Wastewater Modeling , Pollutant
Journal title :
Astroparticle Physics