Evaluating Dye Concentration in Bicomponent Solution by PCA-MPR and PCA-ANN Techniques


Journal: Vol.6, No.2, Spring 2013 - Article 7   Pages :   Until 



Article Code:
PCCC-25-10-2012-219

Authors:
Ali Shams nateri: University of Guilan - Textile Engineering Department


Article's abstract:

This paper studies the application of principal component analysis, multiple polynomial regression, and artificial neural network ANN techniques to the quantitative analysis of binary mixture of dye solution. The binary mixtures of three textile dyes including blue, red and yellow colors were analyzed by PCA-Multiple polynomial Regression and PCA-Artificial Neural network PCA-ANN methods. The obtained results indicate that the accurateness of PCA-ANN technique is higher than PCA-Multiple polynomial regression and normal methods. The PCA-ANN technique is applicable for dye concentration bicomponent solution with both overlapping and non-overlapping spectra. Also the developed method can be a practical solution to remove noise in absorbance spectra and quantitative analysis of binary mixture of dye solutions with overlapping.


Keywords:
Principal component analysis, Artificial neural network, Prediction, Dye Concentration.

References:
1. N. M. Gary, Modern concepts of color and appearance, Science Publishers Inc., U.S.A, 2000.#2. T. Owen, Fundamentals of modern UV-Visible spectroscopy, agilent technologies, Germany, 2000.#3. R. Mc Donald, Color physics for industry, Society of Dyers and Colorists, 1997.#4. W.J. Jasper, E. V. Kovacs, G. I. Berkstresser, Using neural networks to predict dye concentrations in multiple-dye mixtures, Text. Res. J., 63(1993), 545-551.#5. M. Marjoniemi, E. Mantysalo, Neuro-fuzzy modeling of spectroscopic data, part A: modeling of dye solutions, J. Soc. Dyers Color., 113(1997), 13-17.#6. H. Logan, UV and visible spectrophotometry in organic chemistry, http://members.aol.com/ logan20/uv.html, (open accessed 5.10.09).#7. E. I. Stearns, The practice of absorption spectrophotometry, Wiley-Interscience, 1969.#8. E. Ekrami, A. Shams Nateri, Application of the ratio derivative method in quantitative analysis of samples dyed with ternary dye mixtures, Prog. Color Colorants Coat., 1(2008), 1-9.#9. A. Hyvärinen, Survey on independent component analysis, Neural Comput., 2(1999), 94-128.#10. I. S. Lindsay, A tutorial on principal components analysis, http://www.cs.otago.ac.nz /cosc453/student _tutorials/principal_components.pdf, (open accessed 5.10. 09).#11. E. Bingham, Advances in independent component analysis with applications to data mining, Helsinki university of technology, http://lib.hut.fi/Diss/ 2003/isbn9512268205, (open accessed 5.10.09).#12. H. S. Fairman, M. H. Brill, The principal components of reflectance, Color Res. Appl., 29(2004), 104-110.#13. D. Y. Tzeng, R. S. Berns, A review of principal component analysis and Its applications to color technology, Color Res. Appl., 30(2005), 84-98.#14. A. Shams-Nateri, Effect of standard colorimetric observer on the reconstruction of reflectance Spectra of colored fabrics, Color. Technol., 124(2008), 14-18.#15. K. Ansari, S. H. Amirshahi, S. Moradian, Recovery of reflectance spectra from CIE tristimulus values using a progressive database selection technique, Color. Technol., 122(2006), 128-134.#16. F. Agahian, S. H. Amirshahi. A new matching strategy: trial of the principal component coordinates, Color Res. Appl., 33(2008), 10-18.#17. A. Shams-Nateri, Color matching by principal component analysis-based spectrophotometric technique, Color. Technol., 125(2009), 36-42.#18. A. Shams-Nateri, Prediction of dye concentrations in a three-component dye mixture solution by a PCA-derivative spectrophotometry technique, Color Res. Appl., 35(2010), 29-35.


Article's file
Page view: 2953
Article's download quantity : 557


Article System Login
Introduction

Manager-in-Chief:
Prof. Zahra Ranjbar
Editor-in-Chief:
Dr. Farahnaz Nourmohammadian
Assistant Editor:
Dr. Mozhgan Hosseinnezhad
ISSN:
2008-2134
ISSN (online):
2383-1790
Publisher:
Institute for Color Science and Technology (ICST)

Quick Access
Publications
E-Vote
What is your opinion about the manuscript subscription system of PCCC website?
Excellent
Good
Fair
Poor
Website Statistics
Page view:2,954
Online Visitors:90