Trace Element Analysis and Pattern Recognition Techniques in Classification of Wine from Central Balkan Countries
Apstrakt
Chemical analysis in conjunction with multivariate data evaluation methods was used to study elemental profiles and geographical origin of wines from central Balkan countries (Serbia Montenegro and Macedonia) Nine elements (Na K Mg Ca Fe Mn Zn Cu and Pb) chosen as chemical descriptors were analyzed in 41 commercial wine samples Unsupervised pattern recognition methods principal component analysis (PCA) and factor analysis identified the main factors controlling the data variability while the application of hierarchical cluster analysis (HCA) highlighted a differentiation between sample groups belonging to different variable inputs Three PCs were shown to be the most significant together accounting for 70 8% of the total variance Supervised pattern recognition methods linear discriminant analysis (LDA) k nearest neighbor (kNN) soft independent modeling of class analogy (SIMCA) and artificial neural network (ANN) applied to the classification of wine samples demonstrated different recogn...ition and prediction abilities The recognition rate for LDA was 97 6% and the percentage of classification obtained by kNN SIMCA and ANN was 100% However the LDA method produced the best prediction rate of 83 3% whereas kNN SIMCA and ANN gave much lower percentages of correctly classified samples at 72 2 61 1 and 55 6% respectively Trace elements seem to be suitable descriptors for wine samples studied by classification methods since their concentrations comprising both natural and other sources of influence are attributed to grapegrowing and winemaking sites Comparison of pattern recognition methods reveals the difference in their classification power
Ključne reči:
AAS / PCA / kNN / SIMCA / ANN / metalsIzvor:
American Journal of Enology and Viticulture, 2010, 61, 4, 506-511Izdavač:
- Amer Soc Enology Viticulture, Davis
Finansiranje / projekti:
DOI: 10.5344/ajev.2010.10002
ISSN: 0002-9254
WoS: 000285496600009
Scopus: 2-s2.0-78649974982
Institucija/grupa
PharmacyTY - JOUR AU - Ražić, Slavica AU - Onjia, Antonije PY - 2010 UR - https://farfar.pharmacy.bg.ac.rs/handle/123456789/1363 AB - Chemical analysis in conjunction with multivariate data evaluation methods was used to study elemental profiles and geographical origin of wines from central Balkan countries (Serbia Montenegro and Macedonia) Nine elements (Na K Mg Ca Fe Mn Zn Cu and Pb) chosen as chemical descriptors were analyzed in 41 commercial wine samples Unsupervised pattern recognition methods principal component analysis (PCA) and factor analysis identified the main factors controlling the data variability while the application of hierarchical cluster analysis (HCA) highlighted a differentiation between sample groups belonging to different variable inputs Three PCs were shown to be the most significant together accounting for 70 8% of the total variance Supervised pattern recognition methods linear discriminant analysis (LDA) k nearest neighbor (kNN) soft independent modeling of class analogy (SIMCA) and artificial neural network (ANN) applied to the classification of wine samples demonstrated different recognition and prediction abilities The recognition rate for LDA was 97 6% and the percentage of classification obtained by kNN SIMCA and ANN was 100% However the LDA method produced the best prediction rate of 83 3% whereas kNN SIMCA and ANN gave much lower percentages of correctly classified samples at 72 2 61 1 and 55 6% respectively Trace elements seem to be suitable descriptors for wine samples studied by classification methods since their concentrations comprising both natural and other sources of influence are attributed to grapegrowing and winemaking sites Comparison of pattern recognition methods reveals the difference in their classification power PB - Amer Soc Enology Viticulture, Davis T2 - American Journal of Enology and Viticulture T1 - Trace Element Analysis and Pattern Recognition Techniques in Classification of Wine from Central Balkan Countries VL - 61 IS - 4 SP - 506 EP - 511 DO - 10.5344/ajev.2010.10002 ER -
@article{ author = "Ražić, Slavica and Onjia, Antonije", year = "2010", abstract = "Chemical analysis in conjunction with multivariate data evaluation methods was used to study elemental profiles and geographical origin of wines from central Balkan countries (Serbia Montenegro and Macedonia) Nine elements (Na K Mg Ca Fe Mn Zn Cu and Pb) chosen as chemical descriptors were analyzed in 41 commercial wine samples Unsupervised pattern recognition methods principal component analysis (PCA) and factor analysis identified the main factors controlling the data variability while the application of hierarchical cluster analysis (HCA) highlighted a differentiation between sample groups belonging to different variable inputs Three PCs were shown to be the most significant together accounting for 70 8% of the total variance Supervised pattern recognition methods linear discriminant analysis (LDA) k nearest neighbor (kNN) soft independent modeling of class analogy (SIMCA) and artificial neural network (ANN) applied to the classification of wine samples demonstrated different recognition and prediction abilities The recognition rate for LDA was 97 6% and the percentage of classification obtained by kNN SIMCA and ANN was 100% However the LDA method produced the best prediction rate of 83 3% whereas kNN SIMCA and ANN gave much lower percentages of correctly classified samples at 72 2 61 1 and 55 6% respectively Trace elements seem to be suitable descriptors for wine samples studied by classification methods since their concentrations comprising both natural and other sources of influence are attributed to grapegrowing and winemaking sites Comparison of pattern recognition methods reveals the difference in their classification power", publisher = "Amer Soc Enology Viticulture, Davis", journal = "American Journal of Enology and Viticulture", title = "Trace Element Analysis and Pattern Recognition Techniques in Classification of Wine from Central Balkan Countries", volume = "61", number = "4", pages = "506-511", doi = "10.5344/ajev.2010.10002" }
Ražić, S.,& Onjia, A.. (2010). Trace Element Analysis and Pattern Recognition Techniques in Classification of Wine from Central Balkan Countries. in American Journal of Enology and Viticulture Amer Soc Enology Viticulture, Davis., 61(4), 506-511. https://doi.org/10.5344/ajev.2010.10002
Ražić S, Onjia A. Trace Element Analysis and Pattern Recognition Techniques in Classification of Wine from Central Balkan Countries. in American Journal of Enology and Viticulture. 2010;61(4):506-511. doi:10.5344/ajev.2010.10002 .
Ražić, Slavica, Onjia, Antonije, "Trace Element Analysis and Pattern Recognition Techniques in Classification of Wine from Central Balkan Countries" in American Journal of Enology and Viticulture, 61, no. 4 (2010):506-511, https://doi.org/10.5344/ajev.2010.10002 . .