Fiber surface characteristics evaluated by principal component analysis

被引:0
|
作者
Tjaša Drnovšek
Anton Perdih
Marko Perdih
机构
[1] Pulp and Paper Institute,Faculty of Chemistry and Chemical Technology
[2] University of Ljubljana,undefined
[3] Tovarna papirja Goričane Medvode,undefined
来源
Journal of Wood Science | 2005年 / 51卷
关键词
Charge of fibers; Electron spectroscopy for chemical analysis (ESCA); Principal component analysis (PCA); Selective staining; VIS – reflectance spectroscopy;
D O I
暂无
中图分类号
学科分类号
摘要
Principal component analysis (PCA) was used to evaluate the results of standard fiber analyses, determinations of charge, electron spectroscopy for chemical analysis (ESCA) measurements, and selective staining of kraft fibers prebleached with oxygen, followed by hydrogen peroxide or ozone. The majority of data variance is explained by the lignin content in fibers and by polarity (hydrophilicity vs hydrophobicity) of functional groups. The lignin determination methods (kappa number, C1 (ESCA), selective staining) gave similar but not equal results, because they measure different parts of lignin. The determination methods of the charged groups (total charge, surface charge, C4 (ESCA), and hexenuronic acids) also gave similar but not equal results. The results of staining by using cationic dyes do not correlate with the quantity of anionic (mainly carboxylic) groups in fibers, regardless of whether the dyes are selective for lignin or hemicellulose. Hydrogen bonding and hydrophobic interactions seem to overrule ionic interactions between dyes and fibers. Therefore, the majority of bonds formed between fibers themselves, as well as between fibers and paper additives, can to a great extent be expected to have the character of hydrogen bonds.
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页码:507 / 513
页数:6
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