Combined mechanistic and genetic programming approach to modeling pilot NBR production: influence of feed compositions on rubber Mooney viscosity: Electronic supplementary information (ESI) available. See DOI:10.1039/d0ra07257e
Created by W.Langdon from
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- @Article{HE:2020:RSC_Advances,
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author = "Ge He and Tao Luo and Yagu Dang and Li Zhou and
Yiyang Dai and Xu Ji",
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title = "Combined mechanistic and genetic programming approach
to modeling pilot {NBR} production: influence of feed
compositions on rubber Mooney viscosity: Electronic
supplementary information ({ESI)} available. See
DOI:10.1039/d0ra07257e",
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journal = "RSC Advances",
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volume = "11",
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number = "2",
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pages = "817--829",
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year = "2020",
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ISSN = "2046-2069",
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DOI = "doi:10.1039/d0ra07257e",
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URL = "https://www.sciencedirect.com/science/article/pii/S2046206920000121",
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abstract = "Mooney viscosity is an essential parameter in quality
control during the production of nitrile-butadiene
rubber (NBR) by emulsion polymerization. A process
model that could help understand the influence of feed
compositions on the Mooney viscosity of NBR products is
of vital importance for its intelligent manufacture. In
this work, a process model comprised of a mechanistic
model based on emulsion polymerization kinetics and a
data-driven model derived from genetic programming (GP)
for Mooney viscosity is developed to correlate the feed
compositions (including impurities) and process
conditions to Mooney viscosity of NBR products. The
feed compositions are inputs of the mechanistic model
to generate the number-, weight-averaged molecular
weights (Mn, Mw) and branching degree (BRD) of NBR
polymers. With these generated data, the GP model is
used to output the optimal correlation for the Mooney
viscosity of NBR. In a pilot NBR production, Mooney
viscosity data of NBR predicted by the process model
agree quite well with experimental values. Furthermore,
the process model enables the analyses of the
univariate and multivariate influence of feed
compositions on NBR Mooney viscosity, and the variables
include the contents of vinyl acetylene and dimer in
1,3-butadiene, as well as the mass flow rate of the
chain transfer agent (CTA) in the process. Based on the
results, it is recommended to control the content of
vinyl acetylene in the 1,3-butadiene feed below 14 ppm
and the content of dimer below 1100 ppm. This developed
process model would help stabilize NBR viscosity for a
better control of the product quality.",
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keywords = "genetic algorithms, genetic programming",
- }
Genetic Programming entries for
Ge He
Tao Luo
Yagu Dang
Li Zhou
Yiyang Dai
Xu Ji
Citations