Snowmobile noise alters bird vocalization patterns during winter and pre‐breeding season

Author:

Cretois Benjamin1ORCID,Bick Ian Avery12,Balantic Cathleen3,Gelderblom Femke B.4,Pávon‐Jordán Diego1,Wiel Julia1,Sethi Sarab S.15ORCID,Betchkal Davyd H.3,Banet Ben3,Rosten Carolyn M.1,Reinen Tor Arne4

Affiliation:

1. Norwegian Institute for Nature Research Trondheim Norway

2. Department of Computer Science (IDI) Norwegian University of Science and Technology (NTNU) Trondheim Norway

3. National Park Service Natural Sounds and Night Skies Division Fort Collins Colorado USA

4. Acoustics, SINTEF Digital Trondheim Norway

5. Department of Plant Sciences University of Cambridge Cambridge UK

Abstract

Abstract Noise pollution poses a significant threat to ecosystems worldwide, disrupting animal communication and causing cascading effects on biodiversity. In this study, we focus on the impact of snowmobile noise on avian vocalizations during the non‐breeding winter season, a less‐studied area in soundscape ecology. We developed a pipeline relying on deep learning methods to detect snowmobile noise and applied it to a large acoustic monitoring dataset collected in Yellowstone National Park. Our results demonstrate the effectiveness of the snowmobile detection model in identifying snowmobile noise and reveal an association between snowmobile passage and changes in avian vocalization patterns. Snowmobile noise led to a decrease in the frequency of bird vocalizations during mornings and evenings, potentially affecting winter and pre‐breeding behaviours such as foraging, predator avoidance and successfully finding a mate. However, we observed a recovery in avian vocalizations after detection of snowmobiles during mornings and afternoons, indicating some resilience to sporadic noise events. Synthesis and applications: Our findings emphasize the need to consider noise impacts in the non‐breeding season and provide valuable insights for natural resource managers to minimize disturbance and protect critical avian habitats. The deep learning approach presented in this study offers an efficient and accurate means of analysing large‐scale acoustic monitoring data and contributes to a comprehensive understanding of the cumulative impacts of multiple stressors on avian communities.

Funder

Norges Forskningsråd

Publisher

Wiley

Subject

Ecology

Reference61 articles.

1. Burson S.(2009).Natural soundscape monitoring in Yellowstone National Park December 2008‐March 2009.https://irma.nps.gov/DataStore/DownloadFile/629418

2. Burson S.(2018).Winter acoustic monitoring in Yellowstone National Park December 2017‐March 2018. Yellowstone National Park Soundscape Program Report.https://irma.nps.gov/DataStore/DownloadFile/632415

3. Automatic classification and reduction of wind noise in spectral data

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