Rancidity investigation on olive oil: a comparison of multiple headspace analysisusing an electronic nose and GC/MS

2001 ◽  
pp. 227-232
Keyword(s):  
Agriculture ◽  
2021 ◽  
Vol 11 (7) ◽  
pp. 674
Author(s):  
Nawaf Abu-Khalaf

An electronic nose (EN), which is a kind of chemical sensor, was employed to check olive oil quality parameters. Fifty samples of olive oil, covering the four quality categories extra virgin, virgin, ordinary virgin and lampante, were gathered from different Palestinian cities. The samples were analysed chemically using routine tests and signals for each chemical were obtained using EN. Each signal acquisition represents the concentration of certain chemical constituents. Partial least squares (PLS) models were used to analyse both chemical and EN data. The results demonstrate that the EN was capable of modelling the acidity parameter with a good performance. The correlation coefficients of the PLS-1 model for acidity were 0.87 and 0.88 for calibration and validation sets, respectively. Furthermore, the values of the standard error of performance to standard deviation (RPD) for acidity were 2.61 and 2.68 for the calibration and the validation sets, respectively. It was found that two principal components (PCs) in the PLS-1 scores plot model explained 86% and 5% of EN and acidity variance, respectively. PLS-1 scores plot showed a high performance in classifying olive oil samples according to quality categories. The results demonstrated that EN can predict/model acidity with good precision. Additionally, EN was able to discriminate between diverse olive oil quality categories.


Author(s):  
M. Stella Cosio ◽  
Simona Benedetti ◽  
Susanna Buratti ◽  
Matteo Scampicchio ◽  
Saverio Mannino
Keyword(s):  

2000 ◽  
Vol 63 (1-2) ◽  
pp. 1-9 ◽  
Author(s):  
Rita Stella ◽  
Joseph N Barisci ◽  
Giorgio Serra ◽  
Gordon G Wallace ◽  
Danilo De Rossi

2018 ◽  
Vol 10 (2) ◽  
pp. 55
Author(s):  
Imam Tazi ◽  
Muthmainnah Muthmainnah ◽  
Suyono Suyono ◽  
Avin Ainur

<p class="abstrak">A chemometric-based electronic nose has designed for analyzing pork oil and olive oil  using the odor pattern classifications. The electronic nose (e-nose) built from a combination of several chemical sensors derived from a semiconductor. The data retrieval was done by vaporizing the sample, then being captured by the sensor and identified by the electronic nose (e-nose). The output data from the electronic nose is the voltage released by each sensor. The analyzed samples were 100% olive oil, 100% pork oil and a combination of olive oil and pork oil with a ratio of 50%: 50%. The result of pattern classification using linear discriminant analysis (LDA) method shows that each sample is clustered well with the percentage of first discriminant function value is 87,9% and second discriminant function is 12,1%.</p>


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