Classification of food vegetable oils by fluorimetry and artificial neural networks

被引:49
作者
Tanajura da Silva, Carlos Eduardo [1 ]
Filardi, Vitor Leao [1 ]
Pepe, Iuri Muniz [1 ]
Chaves, Modesto Antonio [2 ]
Santos, Carilan Moreira S. [2 ]
机构
[1] Fed Univ Bahia UFBA, PPGM Grad Program Mechatron, Inst Phys, Opt Properties Lab, Salvador, BA, Brazil
[2] State Univ Southwest Bahia UESB, Grad Program Food Sci & Engn, CEDETEC Ctr Dev & Diffus Technol, Itapetinga, BA, Brazil
关键词
Food quality; Chemometrics; Spectrometry; Vegetable oils quality; FLUORESCENCE SPECTROSCOPY; INFRARED-SPECTROSCOPY; CONNECTIVE-TISSUE; OLIVE OIL; AUTHENTICATION; FAT;
D O I
10.1016/j.foodcont.2014.06.030
中图分类号
TS2 [食品工业];
学科分类号
0832 ;
摘要
There is a large variety and trademarks of vegetable oils in Brazil. Vegetable oils have characteristics quite similar to each other and often cannot be distinguished by only observing the color, odor or taste. Methods for classification of these oils are often costly and time consuming and they usually take advantage of techniques from analytical chemistry and mathematical methods such as PCA (Principal Component Analysis), PCR (Principal Components Regression) or PLS (Properties of Partial Least Squares) and ANN (Artificial Neural Networks) to increase their efficiency. Due to the wide variety of products, more efficient methods are needed to qualify, characterize and classify these substances, because the final price should reflect the excellence of the product that reaches the consumer. This paper proposes a methodology to classify vegetable oils like: Canola, Sunflower, Corn and Soybean from different manufacturers. The method used is characterized by a simple mathematical treatment, a light emission diode and CCD array sensor to capture the spectra of the induced fluorescence in diluted oil samples. An ANN that has three layers, each one with 4 neurons is responsible to perform the spectra classifications. The methodology is capable of classifying vegetable oil and allows fast network training using very few mathematical manipulations in the spectra data with 72% a rate of success. (C) 2014 Elsevier Ltd. All rights reserved.
引用
收藏
页码:86 / 91
页数:6
相关论文
共 32 条
[21]   Artificial neural networks in foodstuff analyses: Trends and perspectives A review [J].
Marini, Federico .
ANALYTICA CHIMICA ACTA, 2009, 635 (02) :121-131
[22]   Characterization and authentication of a novel vegetable source of omega-3 fatty acids, sacha inchi (Plukenetia volubilis L.) oil [J].
Maurer, Natalie E. ;
Hatta-Sakoda, Beatriz ;
Pascual-Chagman, Gloria ;
Rodriguez-Saona, Luis E. .
FOOD CHEMISTRY, 2012, 134 (02) :1173-1180
[23]   Fluorescence Spectroscopy and Chemometric Techniques to Identify Compounds in a Mixture [J].
Mujica-Ascencio, C. ;
Moreno-Garcia, E. ;
Stolik Isakina, S. ;
de la Rosa-Vazquez, J. M. .
20TH INTERNATIONAL CONFERENCE ON ELECTRONICS COMMUNICATIONS AND COMPUTERS (CONIELECOMP 2010), 2010, :136-141
[24]  
O'brien R.D., 2010, FATS OILS FORMULATIN
[25]   How to improve quality assurance in fluorometry: Fluorescence-inherent sources of error and suited fluorescence standards [J].
Resch-Genger, U ;
Hoffmann, K ;
Nietfeld, W ;
Engel, A ;
Neukammer, J ;
Nitschke, R ;
Ebert, B ;
Macdonald, R .
JOURNAL OF FLUORESCENCE, 2005, 15 (03) :337-362
[26]   Total luminescence spectroscopy with pattern recognition for classification of edible oils [J].
Scott, SM ;
James, D ;
Ali, Z ;
O'Harea, WT ;
Rowell, FJ .
ANALYST, 2003, 128 (07) :966-973
[27]   Development of intrinsic fluorescent multispectral imagery specific for fat, connective tissue, and myofibers in meat [J].
Skjervold, PO ;
Taylor, RG ;
Wold, JP ;
Berge, P ;
Abouelkaram, S ;
Culioli, J ;
Dufour, É .
JOURNAL OF FOOD SCIENCE, 2003, 68 (04) :1161-1168
[28]  
Souza J. C., 2004, REV ANAL, P25
[29]  
Torrecilla JS, 2010, COMPUT-AIDED CHEM EN, V28, P313
[30]  
Vasilescu J, 2011, ROM J PHYS, V56, P530