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Bioremediation of turquoise blue by Mangifera indica — particle swarm optimization and kinetic modeling

  • 07-06-2023
  • Original Article
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Abstract

The article delves into the bioremediation of turquoise blue dye, a significant pollutant in industrial wastewater, using Mangifera indica shell as an adsorbent. The study employs particle swarm optimization (PSO) and kinetic modeling to optimize the adsorption process. The research highlights the effectiveness of Mangifera indica shell in removing turquoise blue dye, emphasizing its eco-friendly and renewable nature. The use of PSO and machine learning algorithms, such as Lasso and Ridge regression, differentiates this study from others, providing a cutting-edge approach to wastewater treatment. The article also includes detailed characterization of the adsorbent and a comparative analysis with other sorbents, showcasing the superior performance of Mangifera indica shell in dye removal.

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Title
Bioremediation of turquoise blue by Mangifera indica — particle swarm optimization and kinetic modeling
Authors
Umesh B. Deshannavar
Baskaran Sivaprakash
Natarajan Rajamohan
Basavaraj G. Katageri
Amith H. Gadagi
Prasad G. Hegde
Santosh A. Kadapure
Mayur Sutar
Madhura Karanth
Tejashwini Naykar
Publication date
07-06-2023
Publisher
Springer Berlin Heidelberg
Published in
Biomass Conversion and Biorefinery / Issue 17/2024
Print ISSN: 2190-6815
Electronic ISSN: 2190-6823
DOI
https://doi.org/10.1007/s13399-023-04394-4
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