Title of article :
The Use of Partial Least Square Regression and Spectral Data in UV-Visible Region for Quantification of Adulteration in Indonesian Palm Civet Coffee
Author/Authors :
Suhandy, Diding Laboratory of Bioprocess and Postharvest Engineering - Department of Agricultural Engineering - The University of Lampung - Jl. Soemantri Brojonegoro No. 1 - Gedong Meneng - Bandar Lampung - Lampung 35145, Indonesia , Yulia, Meinilwita Department of Agricultural Technology - Lampung State Polytechnic - Jl. Soekarno Hatta No. 10 - Rajabasa - Bandar Lampung - Lampung, Indonesia
Abstract :
Asian palm civet coffee or kopi luwak (Indonesian words for coffee and palm civet) is well known as the world’s priciest and rarest
coffee. To protect the authenticity of luwak coffee and protect consumer from luwak coffee adulteration, it is very important to
develop a robust and simple method for determining the adulteration of luwak coffee. In this research, the use of UV-Visible spectra
combined with PLSR was evaluated to establish rapid and simple methods for quantification of adulteration in luwak-arabica coffee
blend. Several preprocessing methods were tested and the results show that most of the preprocessing spectra were effective in
improving the quality of calibration models with the best PLS calibration model selected for Savitzky-Golay smoothing spectra
which had the lowest RMSECV (0.039) and highest RPDcal value (4.64). Using this PLS model, a prediction for quantification of
luwak content was calculated and resulted in satisfactory prediction performance with high both RPD𝑝 and RER values.
Keywords :
Partial Least Square Regression , Spectral Data , UV-Visible Region , Quantification , Adulteration , Indonesian Palm Civet Coffee
Journal title :
International Journal of Food Science