Application of machine learning to identify predators of stocked fish in Lake Ontario: using acoustic telemetry predation tags to inform management

Natalie V. Klinard, Jordan K. Matley, Silviya V. Ivanova, Sarah M. Larocque, Aaron T. Fisk, Timothy B. Johnson

Producción científica: Contribución a una revistaArtículorevisión exhaustiva

11 Citas (Scopus)

Resumen

Understanding predator–prey interactions and food web dynamics is important for ecosystem-based management in aquatic environments, as they experience increasing rates of human-induced changes, such as the addition and removal of fishes. To quantify the post-stocking survival and predation of a prey fish in Lake Ontario, 48 bloater Coregonus hoyi were tagged with acoustic telemetry predation tags and were tracked on an array of 105 acoustic receivers from November 2018 to June 2019. Putative predators of tagged bloater were identified by comparing movement patterns of six species of salmonids (i.e., predators) in Lake Ontario with the post-predated movements of bloater (i.e., prey) using a random forests algorithm, a type of supervised machine learning. A total of 25 bloater (53% of all detected) were consumed by predators on average (± S.D.) 3.1 ± 2.1 days after release. Post-predation detections of predators occurred for an average (± S.D.) of 78.9 ± 76.9 days, providing sufficient detection data to classify movement patterns. Tagged lake trout Salvelinus namaycush provided the most reliable classification from behavioural predictor variables (89% success rate) and was identified as the main consumer of bloater (consumed 50%). Movement networks between predicted and tagged lake trout were significantly correlated over a 6 month period, supporting the classification of lake trout as a common bloater predator. This study demonstrated the ability of supervised learning techniques to provide greater insight into the fate of stocked fishes and predator–prey dynamics, and this technique is widely applicable to inform future stocking and other management efforts.

Idioma originalEnglish
Páginas (desde-hasta)237-250
Número de páginas14
PublicaciónJournal of Fish Biology
Volumen98
N.º1
DOI
EstadoPublished - ene. 2021

Nota bibliográfica

Funding Information:
Great Lakes Fishery Commission, Grant/Award Number: 2017_JOH_44065; Ministry of Natural Resources; Natural Sciences and Engineering Research Council of Canada; Ontario Great Lakes Protection Fund, Grant/Award Numbers: 07‐46, 07‐50 Funding information

Funding Information:
We thank T. Drew, G. Bluett and the Ontario Ministry of Natural Resources and Forestry (OMNRF) White Lake Fish Culture Station staff for their support and A. Rupnik, M. Hanley and B. Metcalfe for their assistance during surgery and monitoring. We also thank J. Chicoine, T. Dale, B. Perry and T. Schulz of the Ontario Explorer vessel crew. This paper is contribution 85 of the Great Lakes Acoustic Telemetry Observation System (GLATOS).

Publisher Copyright:
© 2020 Fisheries Society of the British Isles

ASJC Scopus Subject Areas

  • Ecology, Evolution, Behavior and Systematics
  • Aquatic Science

PubMed: MeSH publication types

  • Journal Article

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