A new Double Observer based census framework to improve abundance estimations in mountain ungulates and other gregarious species with a reduced effort
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Estimating animal abundance has a key role to play in ecology and conservation, but survey methods are always challenged by imperfect detection. Among the techniques applied to deal with this issue, Double Observer (DO) is increasing in popularity due to its cost-effectiveness. However, the effort of using DO for surveying large territories can be significant. A DO-based survey method that allows accurate abundance estimations with reduced effort would increase the applicability of the method. This would have positive effects on the conservation of species which are challenging to survey such as mountain ungulates.
We used computer simulations based on real data and a field test to assess the reliability of the Double Observer (DO) and of a new proposed survey procedure, the Double Observer Adjusted Survey (DOAS). DOAS is based on total block counts adjusted with some DO surveys conducted in a proportion of the total area only. Such DO surveys are then used to estimate detection probabi..., Main data were obtained through computer simulations, with the script provided \"DOAS script.R\"
With the provided dataset we aimed to test the robustness of the full DO and our proposed DOAS (see related paper for more info), in different field conditions. The DOAS method is based on Double Observer surveys being performed in only a portion of the total target area to estimate the detection probability, that is then used to adjust the counts obtained with total block counts conducted in the whole area.
To test DO and DOAS methods we carried out simulated surveys on populations randomly built under real-case parameters, using as a case study the population of Alpine ibex (Capra ibex) in Gran Paradiso National Park (GPNP, Italy). This simulation results in the provided \"MAIN data). Using these simulated surveys, we tested whether DO conducted in the entire area (full DO) and DOAS are able to provide reliable abundance estimates, compared to block counts, and the relative costs of the two D..., , # A new Double Observer based census framework to improve abundance estimations in mountain ungulates and other gregarious species with a reduced effort
[https://doi.org/10.5061/dryad.zkh1893ks](https://doi.org/10.5061/dryad.zkh1893ks)
## Description of the data and file structure
We provide the R script to perform computer simulations (DOAS script.R) on the reliability of the 3 census methods testes: block counts, full DO and our proposed DOAS procedure.
The \"DOAS_maindata.csv\" is a representative subset of the final dataset obtained running the provided script. Each row is a single simulation, the columns are (see paper for details):
* det.p = simulated detection probability
* pop.size= simulated population sizeÂ
* mean.group = average simulated group size
* size.effect= multiplying factor for the detectability of a single group compared to a large group
* miscount= miscount effect (average group abundance counted compared to the real one)
* surv.sites= number of sites in which D...
创建时间:
2024-11-27



