Design of a combined mixing rule for the prediction of vapor-liquid equilibria using neural networks

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作者
Alvarez, Estrella [1 ]
Riverol, Carmen [1 ]
Correa, J.M. [1 ]
Navaza, J.M. [2 ]
机构
[1] Department of Chemical Engineering, University of Vigo, 36200 Vigo, Spain
[2] Department of Chemical Engineering, University of Santiago de Compostela, 15703 Santiago, Spain
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Least squares approximations - Mathematical models - Mixing - Neural networks - Sensitivity analysis;
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摘要
This paper addresses the design of an intelligent mixing rule formed by the combination of the Wong and Sandlet (W-S) mixing rule and the Huron and Vidal of order 1 (MHV1) mixing rule using the basic principles of neural networks. The basic idea is the use of a perceptron neural network with a least mean squares learning rule in the prediction of vapor-liquid equilibria in isothermal processes. The results obtained were as good as or better than the existing models of similar nature (the maximum deviation was always less than 0.8%). Furthermore, the results can be used to predict systems where no experimental data are available. A sensitivity analysis has been carried out to clarify the effect of the new mixing rule in comparison with the W-S mixing rule and MHVI mixing rule.
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页码:1706 / 1711
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