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Fourier Transform Near-infrared Spectroscopy for Determining Linen Content in Linen/Cotton Blend Products

Authors :
Danny E. Akin
Franklin E. Barton
Miryeong Sohn
David S. Himmelsbach
Source :
Textile Research Journal. 75:583-590
Publication Year :
2005
Publisher :
SAGE Publications, 2005.

Abstract

Flax fibers may be blended with cotton to provide an aesthetic property, improve performance and tailor fabric properties. The quality and cost of the woven fabric blends are affected by the amount of linen in the blend. Microscopic and chemical analyses are currently used to determine linen content in fabrics. This study describes a method to predict the linen percentage in linen/cotton blends using Fourier transform near-infrared (FT-NIR) spectroscopy, rapidly and non-invasively. A calibration model using partial least squares regression analysis was developed with gravimetrically measured ground flax-cotton fiber mixtures as reference samples versus NIR spectra. The best model occurred with a combination of multiplicative scatter correction and first derivative processing of the spectral data gave a standard error of validation of 2.20%, and only one factor was used for the model performance. Using this model, flax content was predicted in specific mixtures of flax and cotton fibers, blended flax-cotton yarns, and various non-scoured flax-cotton fabrics, giving standard errors of prediction less than 3%. Application of the calibration model to the scoured fabric, however, resulted in a higher error value. This result seemed to be due to loss in wax components and substantial changes in the NIR absorbance values of the fabric resulting from the scouring process. An alternative calibration model for scoured and dyed fabrics was developed, and using the model it was possible to predict flax contents in dyed fabrics with an error of 4–6%.

Details

ISSN :
17467748 and 00405175
Volume :
75
Database :
OpenAIRE
Journal :
Textile Research Journal
Accession number :
edsair.doi...........b1af6681d05693f426eee30485ae3e2d
Full Text :
https://doi.org/10.1177/0040517505057167