Machine learning toward improving the performance of membrane-based wastewater treatment: A review

Dansawad, P., Li, Y., Li, Y. , Zhang, J., You, S. , Li, W. and Yi, S. (2023) Machine learning toward improving the performance of membrane-based wastewater treatment: A review. Advanced Membranes, 3, 100072. (doi: 10.1016/j.advmem.2023.100072)

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Abstract

Machine learning (ML) is a data-driven approach that can be applied to design, analyze, predict, and optimize a process based on existing data. Recently, ML has found its application in improving membrane separation performance for wastewater treatment. Models have been developed to predict the performance of membranes to separate contaminants from wastewater, design optimum conditions for membrane fabrication for greater membrane separation performance and predict backwashing membranes and membrane fouling. This review summarizes the progress of ML-based membrane separation modeling and explores the direction of the future development of ML in membrane separation-based wastewater treatment. The strengths and drawbacks of the ML algorithms extensively used in membrane separation-based wastewater treatment are summarized. Artificial neural network (ANN) was the most used algorithm for modeling membrane separation-based wastewater treatment. Future research is recommended to focus on the development of integrated ML algorithms and on combining ML algorithms with other modeling approaches (e.g., process-based models and statistical models). This will serve to achieve higher accuracy and better performance of the ML application.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Li, Yize and You, Dr Siming
Authors: Dansawad, P., Li, Y., Li, Y., Zhang, J., You, S., Li, W., and Yi, S.
College/School:College of Science and Engineering > School of Engineering > Systems Power and Energy
Journal Name:Advanced Membranes
Publisher:Elsevier
ISSN:2772-8234
ISSN (Online):2772-8234
Published Online:21 October 2023
Copyright Holders:Copyright © 2023 The Authors
First Published:First published in Advanced Membranes 3:100072
Publisher Policy:Reproduced under a Creative Commons licence

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