Abstract
The vital role of honeybees in pollination and their high rate of mortality in the last decade have raised concern among beekeepers and researchers alike. As such, robust and remote sensing of beehives has emerged as a potential tool to help monitor the health of honeybees. Over the last decade, several monitoring systems have been proposed, including those based on in-hive acoustics. Despite its popularity, existing audio-based systems do not take context into account (e.g., environmental noise factors), and thus the performance may be severely hampered when deployed. In this paper, we investigate the effect that three different environmental noise factors (i.e., nearby train rail squealing, beekeeper speech, and rain noise) can have on three acoustic features (i.e., spectrogram, mel frequency cepstral coefficients, and discrete wavelet coefficients) used in existing automated beehive monitoring systems. To this end, audio data were collected continuously over a period of three months (August, September, and October) in 2021 from 11 urban beehives located in downtown Montréal, Québec, Canada. A system based on these features and a convolutional neural network was developed to predict beehive strength, an indicator of the size of the colony. Results show the negative impact that environmental factors can have across all tested features, resulting in an increase of up to 355% in mean absolute prediction error when heavy rain was present.
Funder
NSERC Canada
Nectar Technologies Inc.
Deschambault Animal Science Research Centre
Subject
Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science
Reference64 articles.
1. FAO, Apimondia, CAAS, and IZSLT (2021). Good Beekeeping Practices for Sustainable Apiculture.
2. Toward an intelligent and efficient beehive: A survey of precision beekeeping systems and services;Hadjur;Comput. Electron. Agric.,2022
3. Ruvinga, S., Hunter, G.J., Duran, O., and Nebel, J.C. (2021, January 21–24). Use of LSTM Networks to Identify “Queenlessness” in Honeybee Hives from Audio Signals. Proceedings of the 2021 17th International Conference on Intelligent Environments (IE), Dubai, United Arab Emirates.
4. Dubois, S., Choveton-Caillat, J., Kane, W., Gilbert, T., Nfaoui, M., El Boudali, M., Rezzouki, M., and Ferré, G. (2021, January 22–28). Bee Detection For Fruit Cultivation. Proceedings of the 2021 IEEE International Symposium on Circuits and Systems (ISCAS), Daegu, Republic of Korea.
5. Peng, R., Ardekani, I., and Sharifzadeh, H. (2020, January 7–10). An Acoustic Signal Processing System for Identification of Queen-less Beehives. Proceedings of the 2020 Asia-Pacific Signal and Information Processing Association Annual Summit and Conference (APSIPA ASC), Auckland, New Zealand.
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