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Towards Acoustic Monitoring of Bees: Wingbeat Sounds Are Related to Species and Individual Traits

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Specialty Biology
Date 2024 May 5
PMID 38705186
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Abstract

Global pollinator decline urgently requires effective methods to assess their trends, distribution and behaviour. Passive acoustics is a non-invasive and cost-efficient monitoring tool increasingly employed for monitoring animal communities. However, insect sounds remain highly unexplored, hindering the application of this technique for pollinators. To overcome this shortfall and support future developments, we recorded and characterized wingbeat sounds of a variety of Iberian domestic and wild bees and tested their relationship with taxonomic, morphological, behavioural and environmental traits at inter- and intra-specific levels. Using directional microphones and machine learning, we shed light on the acoustic signature of bee wingbeat sounds and their potential to be used for species identification and monitoring. Our results revealed that frequency of wingbeat sounds is negatively related with body size and environmental temperature (between-species analysis), while it is positively related with experimentally induced stress conditions (within-individual analysis). We also found a characteristic acoustic signature in the European honeybee that supported automated classification of this bee from a pool of wild bees, paving the way for passive acoustic monitoring of pollinators. Overall, these findings confirm that insect sounds during flight activity can provide insights on individual and species traits, and hence suggest novel and promising applications for this endangered animal group. This article is part of the theme issue 'Towards a toolkit for global insect biodiversity monitoring'.

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Towards acoustic monitoring of bees: wingbeat sounds are related to species and individual traits.

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PMID: 38705186 PMC: 11070252. DOI: 10.1098/rstb.2023.0111.


Towards a toolkit for global insect biodiversity monitoring.

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PMID: 38705179 PMC: 11070268. DOI: 10.1098/rstb.2023.0101.

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