Integrating biosorption and machine learning for efficient remazol red removal by algae-bacteria co-culture and comparative analysis of predicted models.

Chemosphere

Department of Biotechnology Engineering, University Institute of Engineering and Technology, Panjab University, Chandigarh, India. Electronic address:

Published: May 2024

AI Article Synopsis

  • The research explores the effectiveness of algae and algae-bacteria partnerships in removing the dye Remazol Red 5B from wastewater, achieving impressive removal rates of around 75-78% within 40 minutes.
  • The study finds that the interaction between the dye and the biosorbent, particularly in a composite system of algae and bacteria, fits well with the Temkin model and indicates high biosorption capacity through the Langmuir model.
  • Machine learning models, particularly the Random Forest, are utilized to predict dye removal efficiency, showcasing strong predictive power and suggesting further investigation into hybrid methods for improved wastewater treatment solutions.

Article Abstract

This research investigates into the efficacy of algae and algae-bacteria symbiosis (ABS) in efficiently decolorizing Remazol Red 5B, a prevalent dye pollutant. The investigation encompasses an exploration of the biosorption isotherm and kinetics governing the dye removal process. Additionally, various machine learning models are employed to predict the efficiency of dye removal within a co-culture system. The results demonstrate that both Desmodesmus abundans and a composite of Desmodesmus abundans and Rhodococcus pyridinivorans exhibit significant dye removal percentages of 75 ± 1% and 78 ± 1%, respectively, after 40 min. The biosorption isotherm analysis reveals a significant interaction between the adsorbate and the biosorbent, and it indicates that the Temkin model best matches the experimental data. Moreover, the Langmuir model indicates a relatively high biosorption capacity, further highlighting the potential of the algae-bacteria composite as an efficient adsorbent. Decision Trees, Random Forest, Support Vector Regression, and Artificial Neural Networks are evaluated for predicting dye removal efficiency. The Random Forest model emerges as the most accurate, exhibiting an R value of 0.98, while Support Vector Regression and Artificial Neural Networks also demonstrate robust predictive capabilities. This study contributes to the advancement of sustainable dye removal strategies and encourages future exploration of hybrid approaches to further enhance predictive accuracy and efficiency in wastewater treatment processes.

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http://dx.doi.org/10.1016/j.chemosphere.2024.141791DOI Listing

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