Biosorptive removal of Zn(II) ions by Pongamia oil cake (Pongamia pinnata) in batch and fixed-bed column studies using response surface methodology and artificial neural network.
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Sivakumar Venkatachalam | Arivalagan Pugazhendhi | Karthik Rajendran | K. Rajendran | A. Pugazhendhi | Sivakumar Venkatachalam | Muthusamy Shanmugaprakash | M. Shanmugaprakash
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