Insects, vital for ecosystem stability, are declining globally necessitating improved monitoring methods. Trap-based approaches are labor-intensive, invasive, and limited in scope. This study therefore presents a novel, automated, non-invasive insect monitoring system that detects atmospheric electrical field modulations caused by flying insects. In-field sensors monitor insect activity and biomass without physical trapping, using differential electric field measurements and convolutional neural networks for detection and wing-beat frequency analysis. Furthermore, a biomass algorithm that estimates taxon-specific weights is introduced. To validate this method, paired sensor and Townes Malaise trap deployments were conducted at two sites in a Danish nature reserve. Results showed moderate to strong correlations between sensors and traps, particularly at one site (Spearman's [Formula: see text] for counts; 0.644 for biomass), supporting the method's viability. A discrepancy in biomass estimates between methods, greater than that of counts, suggests the need for further refinement of the sensor's biomass estimation. For inter-method consistency, sensor-sensor correlations ([Formula: see text] for counts; 0.867 for biomass) exceeded Malaise-Malaise correlations ([Formula: see text] for counts; 0.641 for biomass), though not significantly so ([Formula: see text] for counts; [Formula: see text] for biomass). Overall, the study concludes that while further work is needed, this innovative approach shows promise for future insect monitoring and ecological research.
Automated insect detection and biomass monitoring via AI and electrical field sensor technology.
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作者:Odgaard Freja Balmer, Kjærbo Páll Vang, Poorjam Amir Hossein, Hechmi Khaled, Luciano Rubens Monteiro, Krebs Niels
| 期刊: | Scientific Reports | 影响因子: | 3.900 |
| 时间: | 2025 | 起止号: | 2025 Aug 14; 15(1):29858 |
| doi: | 10.1038/s41598-025-15613-5 | ||
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