Artificial neural network model with the parameter tuning assisted by a differential evolution technique: The study of the hold up of the slurry flow in a pipeline
2009 ◽
Vol 15
(2)
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pp. 103-117
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Keyword(s):
This paper describes a robust hybrid artificial neural network (ANN) methodology which can offer a superior performance for the important process engineering problems. The method incorporates a hybrid artificial neural network and differential evolution technique (ANN-DE) for the efficient tuning of ANN meta parameters. The algorithm has been applied for the prediction of the hold up of the solid liquid slurry flow. A comparison with selected correlations in the literature showed that the developed ANN correlation noticeably improved the prediction of hold up over a wide range of operating conditions, physical properties, and pipe diameters.
2010 ◽
Vol 16
(4)
◽
pp. 329-343
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2008 ◽
Vol 14
(3)
◽
pp. 191-203
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2011 ◽
Vol 2
(1)
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2016 ◽
Vol 68
(6)
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pp. 676-682
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