Title of article :
A Study of Cadmium Removal from Aqueous Solutions by Sunflower Powders and its Modeling Using Artificial Neural Network
Author/Authors :
عمويي ، عبدالايمان نويسنده , , عمويي، علي اكبر نويسنده Department of Chemical Engineering, University of Mazandaran, Babolsar, Iran. Amooey, Ali Akbar , اصغرزاده، فاطمه نويسنده ,
Issue Information :
فصلنامه با شماره پیاپی 0 سال 2013
Abstract :
Background and purpose: Cadmium is hazardous and non-biodegradable material entering the food chain. In this paper, the removal of cadmium from aqueous solutions by sunflower powder (the natural biosorbent) was investigated.
Materials and Methods: The experiments were performed in a batch system. The effect of parameters such as contact time, pH, cadmium concentration and adsorbent dose were evaluated.
Results: The results showed that increasing of pH, contact time and adsorbent dose caused increasing efficiency of removal cadmium from aqueous solutions. The results were modeled using biosorption kinetics and a neural network with four hidden neurons, including bias which was able to predict the concentration dependency of data very accurately.
Conclusion: On the basis of the results, could be used from sunflower residues as a cost and efficient biosorbent for treatment of wastewater with Cadmium. The prediction of the artificial neural network model fit the experimental data very precisely.
Journal title :
Iranian Journal of Health Sciences
Journal title :
Iranian Journal of Health Sciences