ID | 115209 |
Title Alternative | Multivariate analysis of NMR spectra
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Author |
Hirano, Tomohiro
Tokushima University
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Kamiike, Ryota
Tokushima University
Hsu, Yuchin
Tokushima University
Momose, Hikaru
Tokushima University|Mitsubishi Rayon
Ute, Koichi
Tokushima University
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Keywords | branched copolymer
chemometrics
NMR
partial least-squares regression
principal component analysis
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Content Type |
Journal Article
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Description | In this paper, we report chemometric approach for structural analysis of branched copolymers. To evaluate chemical compositions and degree of branching (DB) values in branched copolymers, multivariate analyses, such as principal component analysis (PCA) and partial least-squares (PLS) regression, were applied to the 13C nuclear magnetic resonance (NMR) spectra of the carbonyl carbons of the copolymers prepared by initiator-fragment incorporation radical copolymerization of ethylene glycol dimethacrylate (EGDMA) and tert-butyl methacrylate (TBMA) with dimethyl 2,2’-azobisisobutyrate (MAIB). PCA successfully extracted information on monomeric units, such as EGDMA units, TBMA units and MAIB fragments, the last of which were incorporated via initiation and primary radical termination. The chemical compositions and the DB values of the copolymers were predicted
by PLS regression. Proper selection of a training set was found to be important for the prediction: the training set has to contain branched copolymers along with poly(EGDMA) and poly(TBMA). PLS regression using the appropriate training set allowed us to predict quantitatively the chemical compositions and DB values, without any assignments of the individual peaks.
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Journal Title |
Polymer Journal
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ISSN | 00323896
13490540
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NCID | AA00777013
AA12453460
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Publisher | The Society of Polymer Science, Japan|Springer Nature
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Volume | 48
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Issue | 7
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Start Page | 793
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End Page | 800
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Published Date | 2016-03-02
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EDB ID | |
DOI (Published Version) | |
URL ( Publisher's Version ) | |
FullText File | |
language |
eng
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TextVersion |
Author
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departments |
Science and Technology
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