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Wildlife Research Wildlife Research Society
Ecology, management and conservation in natural and modified habitats
RESEARCH ARTICLE

Improving the efficiency of aerial surveys for monitoring North American beaver population dynamics

Madeline Kenyon A , Catherine C. Dennison https://orcid.org/0000-0002-6966-7837 B and Viorel D. Popescu https://orcid.org/0000-0001-7138-0774 A C D *
+ Author Affiliations
- Author Affiliations

A Department of Biological Sciences, Ohio University, 107 Irvine Hall, Athens, OH 45701, USA.

B Ohio Department of Natural Resources, Division of Wildlife, 2045 Morse Road, Columbus, OH, USA.

C Department of Ecology, Evolution and Environmental Biology, Columbia University, Schermerhorn Extension 10th Floor, 1200 Amsterdam Avenue, New York, NY 10027, USA.

D Centre for Environmental Research, University of Bucharest, 1 N. Balcescu Boulevard, Bucharest, Romania.

* Correspondence to: viorelpopescu@gmail.com

Handling Editor: Catarina Campos Ferreira

Wildlife Research 51, WR23105 https://doi.org/10.1071/WR23105
Submitted: 31 August 2023  Accepted: 10 September 2024  Published: 14 October 2024

© 2024 The Author(s) (or their employer(s)). Published by CSIRO Publishing

Abstract

Context

The North American beaver (Castor canadensis) was extirpated from much of its range in the US in the 1800s due to fur trapping and change in land use. However, the species has recolonised much of its former range, including the US state of Ohio. Since 2013, the Ohio Division of Wildlife (ODOW) has monitored trends in beaver colony density via aerial surveys of 40 km × 40 km plots classified as low, medium, or high suitability based on the amount of wetland. Nonetheless, the current classification system may miss important correlates of beaver colony density.

Aims

Our study aimed to (1) identify predictors of beaver colony density (number of colonies inferred from aerial counts of lodges) across Ohio, and (2) develop a model-based classification system to improve the efficacy of monitoring efforts.

Methods

To predict beaver colony density in Ohio we used an aerial survey dataset of 54 plots (40 km × 40 km) collected by ODOW annually between 2013 and 2020, along with a suite of environmental, anthropogenic, and climate variables in a mixed effects modelling framework.

Key results

Beaver colony density was positively associated with wetland and reclaimed surface mine areas and inversely associated with the proportion of agricultural lands. There was a negative interaction between wetland and surface mines; in general, beaver colony density increased with wetland and surface mine area. However, in plots with wetland area >1000 ha, beaver colony density was weakly negatively associated with surface mine area. Using median and interquartile ranges of model-averaged predicted beaver colony density, we developed a new classification of low, moderate and high suitability for both the survey plots and the entire state of Ohio. We found that eastern Ohio had high suitability, while the central and western parts of the state had lower suitability for C. canadensis.

Conclusions

Our approach to identifying predictors for beaver colony density at broad spatial scales highlights the importance of reclaimed surface mines and wetlands for beaver populations, while the model-based habitat classification provides ODOW additional information for monitoring and beaver management decisions.

Implications

Improved C. canadensis monitoring at the landscape scale using habitat classifications that consider local conditions can both improve annual survey cost-effectiveness and facilitate the sustainable management of this recovering species.

Keywords: aerial survey, beaver, conservation, landcover, recovering population, surface mine, wetland, wildlife monitoring.

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