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Frontiers of Chemical Science and Engineering

ISSN 2095-0179

ISSN 2095-0187(Online)

CN 11-5981/TQ

Postal Subscription Code 80-969

2018 Impact Factor: 2.809

Front. Chem. Sci. Eng.    2007, Vol. 1 Issue (4) : 390-394    https://doi.org/10.1007/s11705-007-0071-z
Prediction of the flash points of alkanes by group bond contribution method using artificial neural networks
PAN Yong, JIANG Juncheng, WANG Zhirong
College of Urban Construction & Safety & Environmental Engineering, Nanjing University of Technology, Nanjing 210009, China
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Abstract A group bond contribution model using artificial neural networks, which had the high ability of nonlinear of prediction, was established to predict the flash points of alkanes. This model contained not only the information of group property but also connectivity in molecules. A set of 16 group bonds were used as input parameters of neural networks to study the correlation of molecular structures with flash points of 44 alkanes. The results showed that the predicted flash points were in good agreement with the experimental data that the absolute mean absolute error was 6.9 K and the absolute mean relative error was 2.29%, which were superior to those of traditional group contribution methods. The method can be used not only to reveal the quantitative correlation between flash points and molecular structures of alkanes but also to predict the flash points of organic compounds for chemical engineering.
Issue Date: 05 December 2007
 Cite this article:   
PAN Yong,JIANG Juncheng,WANG Zhirong. Prediction of the flash points of alkanes by group bond contribution method using artificial neural networks[J]. Front. Chem. Sci. Eng., 2007, 1(4): 390-394.
 URL:  
https://academic.hep.com.cn/fcse/EN/10.1007/s11705-007-0071-z
https://academic.hep.com.cn/fcse/EN/Y2007/V1/I4/390
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