Optimisation of process variables by response surface methodology (RSM) for malachite green dye removal using spent tea leaves biochar

Due to simple preparation, spent tea leaves lead to disposing problem and causes accumulation of agricultural wastes. Conventional methods for the effluent treatment are expensive and have low removal efficiency. Hence, the utilisation of agricultural waste to an added value product which known as b...

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Main Author: Nur Ir Imani Ishak
Format: Undergraduate Final Project Report
Language:English
Published: 2019
Online Access:http://discol.umk.edu.my/id/eprint/4700/1/NUR%20IR%20IMANI%20BINTI%20ISHAK.pdf
http://discol.umk.edu.my/id/eprint/4700/
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spelling my.umk.eprints.47002022-05-23T20:28:36Z http://discol.umk.edu.my/id/eprint/4700/ Optimisation of process variables by response surface methodology (RSM) for malachite green dye removal using spent tea leaves biochar Nur Ir Imani Ishak Due to simple preparation, spent tea leaves lead to disposing problem and causes accumulation of agricultural wastes. Conventional methods for the effluent treatment are expensive and have low removal efficiency. Hence, the utilisation of agricultural waste to an added value product which known as biosorbent is suggested due to its reliability and affordability. This study is aimed to use biochar derived from the Spent Tea Leaves (STL) as a biosorbent for Malachite Green (MG) dye removal and the application of Response Surface Methodology (RSM) to optimise the process variables. All analysis was successfully done by applying Central Composite Design (CCD). The adsorptive capacity of spent tea leaves biochar were investigated under combined effects of parameter such as adsorbent dosage, initial dye concentration and contact time. Maximum MG dye adsorption of 98.76 % was achieved using STL biochar. The statistical analysis was performed by ANOVA which indicated good correlation of experimental parameter with R2 of 0.9854. The experimental data was fitted to the empirical second-order polynomial model. Numerical optimisation showed the optimum operating conditions of adsorbent dosage was 0.18 g, 46.92 mg/L of initial dye concentration and contact time of 56.16 minutes with desirability of 1.000. Physical characterization of MG dye, STL powder and STL biochar was studied using FTIR and SEM analysis. Spent tea leaves biochar was found to be very effective for the removal of MG dye from aqueous solution. 2019 Undergraduate Final Project Report NonPeerReviewed text en http://discol.umk.edu.my/id/eprint/4700/1/NUR%20IR%20IMANI%20BINTI%20ISHAK.pdf Nur Ir Imani Ishak (2019) Optimisation of process variables by response surface methodology (RSM) for malachite green dye removal using spent tea leaves biochar. Final Year Project thesis, Universiti Malaysia Kelantan. (Submitted)
institution Universiti Malaysia Kelantan
building Perpustakaan Universiti Malaysia Kelantan
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Kelantan
content_source UMK Institutional Repository
url_provider http://umkeprints.umk.edu.my/
language English
description Due to simple preparation, spent tea leaves lead to disposing problem and causes accumulation of agricultural wastes. Conventional methods for the effluent treatment are expensive and have low removal efficiency. Hence, the utilisation of agricultural waste to an added value product which known as biosorbent is suggested due to its reliability and affordability. This study is aimed to use biochar derived from the Spent Tea Leaves (STL) as a biosorbent for Malachite Green (MG) dye removal and the application of Response Surface Methodology (RSM) to optimise the process variables. All analysis was successfully done by applying Central Composite Design (CCD). The adsorptive capacity of spent tea leaves biochar were investigated under combined effects of parameter such as adsorbent dosage, initial dye concentration and contact time. Maximum MG dye adsorption of 98.76 % was achieved using STL biochar. The statistical analysis was performed by ANOVA which indicated good correlation of experimental parameter with R2 of 0.9854. The experimental data was fitted to the empirical second-order polynomial model. Numerical optimisation showed the optimum operating conditions of adsorbent dosage was 0.18 g, 46.92 mg/L of initial dye concentration and contact time of 56.16 minutes with desirability of 1.000. Physical characterization of MG dye, STL powder and STL biochar was studied using FTIR and SEM analysis. Spent tea leaves biochar was found to be very effective for the removal of MG dye from aqueous solution.
format Undergraduate Final Project Report
author Nur Ir Imani Ishak
spellingShingle Nur Ir Imani Ishak
Optimisation of process variables by response surface methodology (RSM) for malachite green dye removal using spent tea leaves biochar
author_facet Nur Ir Imani Ishak
author_sort Nur Ir Imani Ishak
title Optimisation of process variables by response surface methodology (RSM) for malachite green dye removal using spent tea leaves biochar
title_short Optimisation of process variables by response surface methodology (RSM) for malachite green dye removal using spent tea leaves biochar
title_full Optimisation of process variables by response surface methodology (RSM) for malachite green dye removal using spent tea leaves biochar
title_fullStr Optimisation of process variables by response surface methodology (RSM) for malachite green dye removal using spent tea leaves biochar
title_full_unstemmed Optimisation of process variables by response surface methodology (RSM) for malachite green dye removal using spent tea leaves biochar
title_sort optimisation of process variables by response surface methodology (rsm) for malachite green dye removal using spent tea leaves biochar
publishDate 2019
url http://discol.umk.edu.my/id/eprint/4700/1/NUR%20IR%20IMANI%20BINTI%20ISHAK.pdf
http://discol.umk.edu.my/id/eprint/4700/
_version_ 1763303450688356352
score 13.160551