Classification of aged wine distillates using fuzzy and neural network systems

Citation
Cg. Raptis et al., Classification of aged wine distillates using fuzzy and neural network systems, J FOOD ENG, 46(4), 2000, pp. 267-275
Citations number
31
Categorie Soggetti
Food Science/Nutrition
Journal title
JOURNAL OF FOOD ENGINEERING
ISSN journal
02608774 → ACNP
Volume
46
Issue
4
Year of publication
2000
Pages
267 - 275
Database
ISI
SICI code
0260-8774(200012)46:4<267:COAWDU>2.0.ZU;2-G
Abstract
The classification of aged wine distillates is a non-linear, multi-criteria decision-making problem characterized by overwhelming complexity, non-line arity and lack of objective information regarding the desired final product qualitative characteristics. The most efficient solution for the evaluatio n of aged wine distillates estimations with emphasis on the properties of t he aroma and the taste, when an appropriate mathematical model cannot be fo und, is to develop adequate and reliable expert systems based on fuzzy logi c and neural networks. A fuzzy classifier and a neural network are proposed for the classification of wine distillates for each of two distinct featur es of the products namely the aroma and the taste. The fuzzy classifier is based on the fuzzy k-nn algorithm while the neural system is a feedforward sigmoidal multilayer network which is trained using the back-propagation me thod. The results show that both fuzzy and neural classification systems pe rformed remarkably well in the evaluation of the aroma and the taste of the products. (C) 2000 Elsevier Science Ltd. All rights reserved.