Rövidített megjelenítés

Várkonyi, Dániel T.
Bányai, Dóra T.
Várkonyi-Kóczy, Annamária R.
2025-08-19T11:28:21Z
2025-08-19T11:28:21Z
2024
1785-8860hu_HU
http://hdl.handle.net/20.500.14044/32457
Remote monitoring of the status of beehives is essential for efficient beekeeping, leading to less workload on the beekeeper and, because of not opening the hives too frequently, to less stress for the colonies. Sound analysis, utilizing machine learning models of various paradigms, is a common feature of so-called smart hives. Most of these models are aimed at the task of swarming prediction. Swarming of a colony, a fundamental phenomenon in the reproductive process of bees, can cause substantial losses in the production of the apiary and, thus, its prediction is of utmost importance. However, especially in case of nomadic beekeeping where the apiary is moved to the country without access to electricity and good internet connection, the used prediction models should run “on-site” with as low energy consumption as possible and using internet connection only to send alerts to the beekeeper. For such, lightweight models are required which can be achieved by using simpler prediction models and/or only the most important audio features. In this paper, the importance of audio features for swarming prediction is investigated by using a genetic algorithm. Various Machine Learning models are trained, using the selected features, and used for predicting swarming on real-world data collected in one Hungarian apiary. This experimental evaluation is the main contribution of this paper. While genetic algorithms are commonly used for feature selection, however, to the best of the authors' knowledge, they have not yet been used in the beekeeping domain.hu_HU
dc.formatPDFhu_HU
enhu_HU
Investigating Traditional Machine Learning Models and the Utility of Audio Features for Lightweight Swarming Prediction in Beehiveshu_HU
Open accesshu_HU
Óbudai Egyetemhu_HU
Budapesthu_HU
Óbudai Egyetemhu_HU
Műszaki tudományok - multidiszciplináris műszaki tudományokhu_HU
precision apiculturehu_HU
audio feature extractionhu_HU
feature selectionhu_HU
predictionhu_HU
machine learninghu_HU
genetic algorithm based feature selectionhu_HU
Tudományos cikkhu_HU
Acta Polytechnica Hungaricahu_HU
local.tempfieldCollectionsFolyóiratcikkekhu_HU
10.12700/APH.21.10.2024.10.18
Kiadói változathu_HU
17 p.hu_HU
10. sz.hu_HU
21. évf.hu_HU
2024hu_HU
Óbudai Egyetemhu_HU


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