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Modeling, optimization and understanding of adsorption process for pollutant removal via machine learning: Recent progress and future perspectives. | LitMetric

Modeling, optimization and understanding of adsorption process for pollutant removal via machine learning: Recent progress and future perspectives.

Chemosphere

School of Environmental Science and Engineering, Suzhou University of Science and Technology, Suzhou, 215009, People's Republic of China; Key Laboratory of Suzhou Sponge City Technology, Suzhou, 215002, People's Republic of China. Electronic address:

Published: January 2023

AI Article Synopsis

  • Reducing pollutant concentrations in water is essential, and adsorption technology has emerged as a cost-effective method for removing these pollutants, despite existing challenges like inefficiency and time consumption in current experimental approaches.
  • Machine learning (ML) is proposed as an innovative solution to enhance traditional adsorption models, with a review outlining its general workflow and common algorithms, as well as recent advancements in optimizing adsorption processes through ML.
  • The review highlights the potential of ML to improve pollutant adsorption by addressing efficiency, operating conditions, and mechanisms, while also discussing existing challenges and future directions for its application in environmental science.

Article Abstract

It is crucial to reduce the concentration of pollutants in water environment to below safe levels. Some cost-effective pollutant removal technologies have been developed, among which adsorption technology is considered as a promising solution. However, the batch experiments and adsorption isotherms widely employed at present are inefficient and time-consuming to some extent, which limits the development of adsorption technology. As a new research paradigm, machine learning (ML) is expected to innovate traditional adsorption models. This reviews summarized the general workflow of ML and commonly employed ML algorithms for pollutant adsorption. Then, the latest progress of ML for pollutant adsorption was reviewed from the perspective of all-round regulation of adsorption process, including adsorption efficiency, operating conditions and adsorption mechanism. General guidelines of ML for pollutant adsorption were presented. Finally, the existing problems and future perspectives of ML for pollutant adsorption were put forward. We highly expect that this review will promote the application of ML in pollutant adsorption and improve the interpretability of ML.

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Source
http://dx.doi.org/10.1016/j.chemosphere.2022.137044DOI Listing

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