A Stacked Neural Network Approach for Yield Prediction of Propylene Polymerization

Monemian, SA; Shahsavan, H; Bolouri, O; Taranejoo, S; Goodarzi, V; Torabi-Angaji, M

HERO ID

1312102

Reference Type

Journal Article

Year

2010

Language

English

HERO ID 1312102
In Press No
Year 2010
Title A Stacked Neural Network Approach for Yield Prediction of Propylene Polymerization
Authors Monemian, SA; Shahsavan, H; Bolouri, O; Taranejoo, S; Goodarzi, V; Torabi-Angaji, M
Journal Journal of Applied Polymer Science
Volume 116
Issue 3
Page Numbers 1237-1246
Abstract Prediction of reaction yield as the most important characteristic process of a slurry polymerization industrial process of propylene has been carried out. Stacked neural network as an effective method for modeling of inherently complex and nonlinear systems-especially a system with a limited number of experimental data points-was chosen for yield prediction. Also, effect of operational parameters on propylene polymerization yield was modeled by the use of this method. The catalyst system was Mg(OEt)(2)/DIBP/TiCl(4)/PTES/AlEt(3), where Mg(OEt)(2), DIBP (diisobutyl phthalate), TiCl(4), PTES (phenyl triethoxy silane), and triethyl aluminum (AlEt(3)) (TEAl) were employed as support, internal electron donor (ID), catalyst precursor, external electron donor (ED), and co-catalyst, respectively. The experimental results confirmed the validity of the proposed model. (C) 2009 Wiley Periodicals, Inc. J Appl Polym Sci 116: 1237-1246, 2010
Doi 10.1002/app.31257
Wosid WOS:000275342200001
Url https://search.proquest.com/docview/901653645?accountid=171501http://onlinelibrary.wiley.com/doi/10.1002/app.31251/abstract
Is Certified Translation No
Dupe Override No
Comments Source: Web of Science 000275342200001
Is Public Yes
Language Text English
Keyword stacked neural network; modeling; polyolefins; Ziegler-Natta polymerization