| Literature DB >> 25577061 |
Ofélia Anjos1, Carla Iglesias2, Fátima Peres3, Javier Martínez4, Ángela García2, Javier Taboada2.
Abstract
The aim of this work is develop a tool based on neural networks to predict the botanical origin of honeys using physical and chemical parameters. The managed database consists of 49 honey samples of 2 different classes: monofloral (almond, holm oak, sweet chestnut, eucalyptus, orange, rosemary, lavender, strawberry trees, thyme, heather, sunflower) and multifloral. The moisture content, electrical conductivity, water activity, ashes content, pH, free acidity, colorimetric coordinates in CIELAB space (L(∗), a(∗), b(∗)) and total phenols content of the honey samples were evaluated. Those properties were considered as input variables of the predictive model. The neural network is optimised through several tests with different numbers of neurons in the hidden layer and also with different input variables. The reduced error rates (5%) allow us to conclude that the botanical origin of honey can be reliably and quickly known from the colorimetric information and the electrical conductivity of honey.Entities:
Keywords: Botanical origin; Classification problem; Honey; Neural networks; Overfitting; Physical–chemical parameters
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Year: 2014 PMID: 25577061 DOI: 10.1016/j.foodchem.2014.11.121
Source DB: PubMed Journal: Food Chem ISSN: 0308-8146 Impact factor: 7.514