Title of article :
Determination of the adulteration of butter fat by its triglyceride composition obtained by GC. A comparison of the suitability of PLS and neural networks
Author/Authors :
Lipp، نويسنده , , Markus، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1996
Pages :
7
From page :
389
To page :
395
Abstract :
The suitability of partial least squares (PLS) and neural nets for the identification of mixtures of butter fat with foreign fat is compared. While neural nets are most suitable for classification, quantitative results are obtained by PLS. Butter fats of various European countries have been analyzed by GC. Fifty-six samples were used as the calibration set to build the PLS model and prepare the neural net, respectiveley. For successful modelling a 11-factor PLS model was sufficient. The neural net architecture chosen is a 17 × 1 preceptron. Both data evaluation techniques have been validated with 28 samples not included in the calibration set. For PLS the results indicate a detection limit of 1–2% foreign fat in butter fat. The neural net classified 20 samples correctly, but eight samples could not be classified at all.
Journal title :
Food Chemistry
Serial Year :
1996
Journal title :
Food Chemistry
Record number :
1946879
Link To Document :
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