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Fast, flexible alternatives to regular grid designs for spatial capture-recapture

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Durbach_2020_MEE_FastExible_AAM_1.pdf (1.297Mb)
Date
02/2021
Author
Durbach, Ian Noel
Borchers, David Louis
Sutherland, Chris
Sharma, Koustubh
Keywords
Camera trap
Population ecology
Sampling
Spatial capture-recapture
Surveys
QA Mathematics
QH301 Biology
DAS
BDC
R2C
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Abstract
1. Spatial capture-recapture (SCR) methods use the location of detectors (camera traps, hair snares, live-capture traps) and the locations at which animals were detected (their spatial capture histories) to estimate animal density. Despite the often large expense and effort involved in placing detectors in a landscape, there has been relatively little work on how detectors should be located. A natural criterion is to place traps so as to maximize the precision of density estimators, but the lack of a closed-form expression for precision has made optimizing this criterion computationally demanding. 2. Recent results by Efford and Boulanger (2019) show that precision can be well approximated by a function of the expected number of detected individuals and expected number of recapture events, both of which can be evaluated at low computational cost. We use these results to develop a method for obtaining survey designs that optimize this approximate precision for SCR studies using count or binary proximity detectors, or multi-catch traps. 3. We show how the basic design protocol can be extended to incorporate spatially-varying distributions of activity centres and animal detectability. We illustrate our approach by simulating from a camera trap study of snow leopards in Mongolia and comparing estimates from our designs to those generated by regular or optimized grid designs. Optimizing detector placement increased the number of detected individuals and recaptures, but this did not always lead to more precise density estimators due of less precise estimation of the effective sampling area. In most cases the precision of density estimators was comparable to that obtained with grid designs, with improvement in some scenarios where approximate CV (^D) <20% and density varied spatially. 4. Designs generated using our approach are transparent and statistically grounded. They can be produced for survey regions of any shape, adapt to known information about animal density and detectability, and are potentially easier and less costly to implement. We recommend their use as good, exible candidate designs for SCR surveys when reasonable knowledge of model parameters exists. We provide software for researchers to construct their own designs, in the form of updates to design functions in the R package oSCR.
Citation
Durbach , I N , Borchers , D L , Sutherland , C & Sharma , K 2021 , ' Fast, flexible alternatives to regular grid designs for spatial capture-recapture ' , Methods in Ecology and Evolution , vol. 12 , no. 2 , pp. 298-310 . https://doi.org/10.1111/2041-210X.13517
Publication
Methods in Ecology and Evolution
Status
Peer reviewed
DOI
https://doi.org/10.1111/2041-210X.13517
ISSN
2041-210X
Type
Journal article
Rights
Copyright © 2020 British Ecological Society. This work has been made available online in accordance with publisher policies or with permission. Permission for further reuse of this content should be sought from the publisher or the rights holder. This is the author created accepted manuscript following peer review and may differ slightly from the final published version. The final published version of this work is available at https://doi.org/10.1111/2041-210X.13517.
Description
Funding: This work was done to support the Population Assessment of the World's Snow Leopards (PAWS) initiative being coordinated by the Global Snow Leopard and Ecosystem Protection Program (GSLEP) through funding from the Global Environment Facility (Trans-boundary co-operation for snow leopard and ecosystem conservation project ID 5886), made available through United Nations Development Program and International Snow Leopard Trust. ID is supported in part by funding from the National Research Foundation of South Africa (Grant ID 90782, 105782).
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  • University of St Andrews Research
URI
http://hdl.handle.net/10023/24294

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