Quantification of components of textile fabrics by using chemometric techniques with FT-NIR spectroscopic data

M. Uddin, Sk Ray, MS Islam, M. Karim, M. Jahan
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引用次数: 0

Abstract

The study has attempted to develop chemometric modeling based method to quantify compositions of textile fabrics by FT-NIR spectroscopic data. Three calibration techniques such as: Principal Component Regression (PCR), Partial Least Square Regression (PLSR) and Artificial Neural Network (ANN) were assessed, and PLSR showed the best result. Several pretreatment techniques of spectral data have been evaluated, and Multiplicative Scatter Correction (MSC) performed the best. Results also shows that performance of PLSR was satisfactory for quantification of cotton (R2 ≈0.99), elastine (R2 ≈0.97) and polyester (R2≈0.94) when FT-NIR spectral data were pretreated with MSC. But for quantification of viscose in mixture fabric, efficiency of developed model was not upto the mark (R2≈0.75). Finally, the developed PLSR model with FT-NIR spectroscopic data pretreated with MSC could be used for quantification of cotton, elastine and polyester in textile fabrics rapidly and with comparatively low cost. Bangladesh J. Sci. Ind. Res. 57(4), 229-238, 2022
利用FT-NIR光谱数据的化学计量技术对纺织织物成分进行定量分析
该研究试图开发基于化学计量建模的方法,通过FT-NIR光谱数据来量化纺织品的成分。对主成分回归(PCR)、偏最小二乘回归(PLSR)和人工神经网络(ANN)三种校准技术进行了评估,PLSR的结果最好。对光谱数据的几种预处理技术进行了评价,其中乘法散射校正(MSC)效果最好。结果还表明,当用MSC预处理FT-NIR光谱数据时,PLSR对棉花(R2≈0.99)、弹性蛋白(R2≈0.97)和聚酯(R2≈0.9 4)的定量性能是令人满意的。最后,利用MSC预处理的FT-NIR光谱数据建立的PLSR模型,可以快速、低成本地对织物中的棉、弹性蛋白和聚酯进行定量。孟加拉国科学杂志。Ind.Res.57(4),229-2382022
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