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The influence of abundance on detectability

journal contribution
posted on 2024-11-01, 12:06 authored by Michael McCarthy, Joslin Moore, William Morris, Kirsten Parris, Georgia Garrard, Peter Vesk, Libby Rumpff, Katherine Giljohann, James Camac, S Sana Bau, Tessa Friend, Barnabas Harrison, Benita Yue
Plant and animal survey detection rates are important for ecological surveys, environmental impact assessment, invasive species monitoring, and modeling species distributions. Species can be difficult to detect when rare but, in general, how detection probabilities vary with abundance is unknown. We developed a new detectability model based on the time to detection of the first individual of a species. Based on this model, the predicted detection rate is proportional to a power function of abundance with a scaling exponent between zero and one that depends on clustering of individuals. We estimated the model parameters with data from three independent datasets: searches for chenopod shrub species and coins, experimental searches for planted seedlings, and frog surveys at multiple sites in sub-tropical forests of eastern Australia. Analyses based on the detection time and detection probability suggest that detection rate increases with abundance as predicted. The model provides a way to scale detection rates to cases of low abundance when direct estimation of detection rates is often impractical.

History

Journal

Oikos

Volume

122

Start page

717

End page

726

Total pages

10

Publisher

Nordic Foundation Oikos

Place published

Sweden

Language

English

Copyright

© 2012 The Authors. © 2012 Nordic Society Oikos

Former Identifier

2006038754

Esploro creation date

2020-06-22

Fedora creation date

2013-01-07

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