In fuzzy logic, the calibration of membership functions is often cumbersome
and the use of univariate models, such as triangular or trapezoidal functi
ons, is not always ideal. In this study, artificial neural networks were us
ed as multivariate models for the fuzzification of milk yield, with the aim
of providing a more convenient approach than traditional techniques. The o
bjective was to develop a neuro-fuzzifier that would mimic an expert's proc
ess of assigning dairy production records to fuzzy milk-yield sets and asse
ssing their corresponding degrees of membership. Data consisted of 313 dair
y production records fuzzified by an expert, according to herd-average 305-
day milli yield, cow lactation number, days in lactation, standard milk yie
ld on test day, test day milk-yield and deviation of test day production fr
om a standard value. Five fuzzy sets for milk yield were predetermined as b
eing very low, low, medium, high and very high. Two neuro-classifiers were
first trained to identify the sets to which a record belonged and then, fou
r specialized networks were devised to predict the corresponding degrees of
membership. In order to evaluate this approach, network classification and
predictions were compared with those obtained from a previously developed
univariate model and results showed that it was generally better in both th
e classification of mill; yields into fuzzy sets, and the determination of
corresponding degrees of membership. These results suggest that the approac
h of neuro-fuzzification may be superior to traditional methods for applica
tions that require multivariate fuzzifiers. (C) 2000 Elsevier Science B.V.
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