Modeling of pertinent parameters influence on the time dependent mass transfer coefficient of particulate matter under the sink effect
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- @Article{WEI:2023:powtec,
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author = "Tao Wei and Shuo Yang and Lianze Wang",
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title = "Modeling of pertinent parameters influence on the time
dependent mass transfer coefficient of particulate
matter under the sink effect",
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journal = "Powder Technology",
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volume = "425",
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pages = "118536",
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year = "2023",
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ISSN = "0032-5910",
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DOI = "doi:10.1016/j.powtec.2023.118536",
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URL = "https://www.sciencedirect.com/science/article/pii/S0032591023003200",
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keywords = "genetic algorithms, genetic programming, Particulate
matter, Particle sink effect, Mass transfer
coefficient, Multi-gene genetic programming, Non-linear
multiple regression",
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abstract = "One of the most crucial evaluation metrics for the
performance of particle sink purification technology is
the time-dependent mass transfer coefficient (TDMTC).
Therefore, it is very helpful for designers and
developers to accurately describe the functional
relationship between different influence parameters and
the TDMTC. In this paper, four influence parameters
(the applied voltage (V), interelectrode distance (dc),
porosity (P), and shape (n) of the collecting
electrode) were considered, and then non-linear
multiple regression (NLMR) and multi-gene genetic
programming (MGGP) methods were used to establish
prediction models of the TDMTC. Results showed that V
and n were the most significant factors, followed by dc
and P. Both multi-factor models could accurately
predict the TDMTC under the sink effect with a maximum
prediction error of 20percent and 15percent,
respectively. Moreover, for particulate matter (PM)
with different size fractions, MGGP models could
improve the prediction accuracy by 5-10percent compared
to NLMR models",
- }
Genetic Programming entries for
Tao Wei
Shuo Yang
Lianze Wang
Citations