Modified Spent Tea Leaves as Bioadsorbent for Methyl Orange Dye Removal

In this work, the removal of Methyl Orange (MO) from aqueous solution was studied using a new nonconventional and eco-friendly adsorbent, spent tea leaves (STL). Untreated and acid treated STL were used as bio-adsorbent for removal of MO using batch method. Effects of different STL dosages (1 – 4...

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Main Authors: Lim, Ying-Chin, Ling, Ying Pei, Amira Nadzirah, Suhaidi, Siti Marziya, Zulkifli, Syamil Hidayat, Hashim, Kanakaraju, Devagi
Format: E-Article
Language:English
Published: Universiti Putra Malaysia Press. 2017
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Online Access:http://ir.unimas.my/id/eprint/21789/7/Modified%20Spent%20Tea%20Leaves%20as%20Bioadsorbent%20for%20Methyl%20Orange%20%28abstract%29.pdf
http://ir.unimas.my/id/eprint/21789/
http://www.pertanika.upm.edu.my/
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Summary:In this work, the removal of Methyl Orange (MO) from aqueous solution was studied using a new nonconventional and eco-friendly adsorbent, spent tea leaves (STL). Untreated and acid treated STL were used as bio-adsorbent for removal of MO using batch method. Effects of different STL dosages (1 – 4 g), pH solutions (2–11) and initial dye concentrations (10 – 60 mg/L) were investigated. Adsorption experiments conducted using acid treated STL resulted in higher MO removal efficiency ranging from 79 to 92% for 1-4 g of adsorbent dosage compared to the untreated ones which resulted in only 18 to 56% of removal for the similar amount of dosage. In addition, acidic condition favours the MO removal as compared to alkaline medium. Experimental data were analysed using the Langmuir and Freundlich models of adsorption and it was found that adsorption isotherm was best described by Freundlich model and pseudo-first order equation with high correlation coefficient. Results revealed that acid treated STL, being a waste, has the greater potential to be used as adsorbent for MO removal from aqueous solution Lim Ying Pei1, Amira Nadzirah Suhaidi1, Siti Marziya Zulkifli1, Syamil Hidayat Hassim1, Devagi Kanakaraju3 and Lim Ying Chin2*