1.9. Vatskel V., Biloshchytskyi A., Neftissov A., Kuchanskyi O., Andrashko Y., Biloshchytska S., Sachenko I. Integrating machine learning and IoT into apiary management to optimize bee health and production. Procedia Computer Science. 2024. Vol. 241. P. 494-500. DOI: https://doi.org/10.1016/j.procs.2024.08.070

Анотація

This article discusses integrating machine learning and IoT technologies into bee apiary management systems. The research aims to optimize bee conditions, improve their health and increase honey production. Using machine learning, large amounts of data collected by hive sensors are analyzed to predict and prevent various bee health problems effectively. Particular attention is paid to methods of controlling temperature in hives through pulse-width modulation technology, which provides accurate and energy-efficient regulation of temperature conditions. A method for predicting temperature in hives for effective apiary management is also proposed.

Опис

Тип публікації

Text

Тип текстової публікації

Стаття

ISSN

Ключові слова

beekeeping, machine learning, Internet of Things, temperature control, pulse width modulation, sustainable agriculture, energy efficiency

Бібліографічний опис

1.9. Vatskel V., Biloshchytskyi A., Neftissov A., Kuchanskyi O., Andrashko Y., Biloshchytska S., Sachenko I. Integrating machine learning and IoT into apiary management to optimize bee health and production. Procedia Computer Science. 2024. Vol. 241. P. 494-500. DOI: https://doi.org/10.1016/j.procs.2024.08.070

Endorsement

Review

Supplemented By

Referenced By