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Classification of rapeseed and soybean oils by use of unsupervised pattern-recognition methods and neural networks

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Abstract.

Unsupervised pattern-recognition methods and Kohonen neural networks have been applied to the classification of rapeseed and soybean oil samples according to their type and quality by use of chemical and physical properties (density, refractive index, saponification value, and iodine and acid numbers) and thermal properties (thermal decomposition temperatures) as variables. A multilayer feed-forward (MLF) neural network (NN) has been used to select the most important variables for accurate classification of edible oils. To accomplish this task different neural networks architectures trained by back propagation of error method, using chemical, physical, and thermal properties as inputs, were employed. The network with the best performance and the smallest root mean squared (RMS) error was chosen. The results of MLF network sensitivity analysis enabled the identification of key properties, which were again used as variables in principal components analysis (PCA), cluster analysis (CA), and in Kohonen self-organizing feature maps (SOFM) to prove their reliability.

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Wesołowski, M., Suchacz, B. Classification of rapeseed and soybean oils by use of unsupervised pattern-recognition methods and neural networks. Fresenius J Anal Chem 371, 323–330 (2001). https://doi.org/10.1007/s002160100921

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  • DOI: https://doi.org/10.1007/s002160100921

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