Formation of informative signs for predicting the disease of highly productive cows with non-communicable diseases
Lola SafarovaTeacher of Sam IVM Applicant for scientific and innovative center for information and communication technologies at TUIT named after Muhammad al-Khorezmi, Toshkent, Uzbekiston
ABI
Annotatsiya
Abstract In this article, fuzzy set membership functions have been developed based on the main factors (clinical, morphochemical, rumen contents) to predict the following non-communicable diseases such as ketosis, osteodystrophy, secondary osteodystrophy and hypomicroelementosis in high-yielding cows. The results of the study show the high efficiency of the proposed decision-making algorithm for forecasting, classifying and measuring poorly formalized processes, that are described by fuzzy models. The available knowledge about the existing experimental data makes it possible to increase the adequacy of the fuzzy expert system.
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