Artificial intelligence-incorporated membrane fouling prediction for membrane-based processes in the past 20 years: A critical review
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- @Article{NIU:2022:watres,
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author = "Chengxin Niu and Xuesong Li and Ruobin Dai and
Zhiwei Wang",
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title = "Artificial intelligence-incorporated membrane fouling
prediction for membrane-based processes in the past 20
years: A critical review",
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journal = "Water Research",
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volume = "216",
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pages = "118299",
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year = "2022",
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ISSN = "0043-1354",
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DOI = "doi:10.1016/j.watres.2022.118299",
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URL = "https://www.sciencedirect.com/science/article/pii/S0043135422002627",
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keywords = "genetic algorithms, genetic programming, Membrane
fouling, artificial intelligence, fouling prediction,
membrane-based process",
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abstract = "Membrane fouling is one of major obstacles in the
application of membrane technologies. Accurately
predicting or simulating membrane fouling behaviours is
of great significance to elucidate the fouling
mechanisms and develop effective measures to control
fouling. Although mechanistic/mathematical models have
been widely used for predicting membrane fouling, they
still suffer from low accuracy and poor sensitivity. To
overcome the limitations of conventional mathematical
models, artificial intelligence (AI)-based techniques
have been proposed as powerful approaches to predict
membrane filtration performance and fouling behaviour.
This work aims to present a state-of-the-art review on
the advances in AI algorithms (e.g., artificial neural
networks, fuzzy logic, genetic programming, support
vector machines and search algorithms) for prediction
of membrane fouling. The working principles of
different AI techniques and their applications for
prediction of membrane fouling in different
membrane-based processes are discussed in detail.
Furthermore, comparisons of the inputs, outputs, and
accuracy of different AI approaches for membrane
fouling prediction have been conducted based on the
literature database. Future research efforts are
further highlighted for AI-based techniques aiming for
a more accurate prediction of membrane fouling and the
optimization of the operation in membrane-based
processes",
- }
Genetic Programming entries for
Chengxin Niu
Xuesong Li
Ruobin Dai
Zhiwei Wang
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