Predicting bushmeat biomass from species composition captured by camera traps: implications for locally-based wildlife monitoring
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The âStatAnalysis.zipâ contains the data and model files. We used it for the four analyses below.
First, we estimated population densities, the mean body mass and camera-trap capture rates of five main bushmeat targets in a rainforest of southeast Cameroon: Petersâs duikers (Cephalophus callipygus), bay duikers (C. dorsalis), blue duikers (Philantomba monticola), brush-tailed porcupines (Atherurus africanus) and Eminâs pouched rats (Cricetomys emini). Second, on the basis of the density and body mass estimates, we estimated bushmeat biomassâthe total biomass of the five bushmeat speciesâand its spatial variation. Third, we calculated six bushmeat indicators based on the capture rate estimates. Lastly, we examined the correlation between bushmeat biomass and the indicators.
The ZIP file consists of 16 R script files, three CSV files (in the âdataâ subfolder) and 135 stan files (in the âstanâ subfolders). It also has two empty folders, âfigureâ and âresâ, where the figures and R objects o..., The two data filesââDetectionData.csvâ and âStayTimeData.csvââwere created based on a camera trap study conducted from September 2018 to February 2019. The âBodyMassData.csvâ contains the body mass data of the hunted animals in the study area.
We estimated population density and its spatial variation using the REST model (Nakashima et al. 2018, 2020). The REST model was implemented in a Bayesian framework using Stan. We also used Stan to estimate the mean body mass and camera-trap capture rates from the âBodyMassData.csvâ and the 'DetectionData.csv', respectively. Finally, bushmeat biomass and bushmeat indicators were calculated using the MCMC samples from the WAIC-based optimal models of the density, body mass and capture rate estimation., 1. Keep the current folder structure. Don't move any files for proper analysis.
2. Please proceed with the analyses in the order of the R script file numbers.
3. In each subfolder of the âfigureâ and âresâ folders, there is a âdummy.txtâ file. It is to preserve the folder structure. You may remove these text files after unzipping.
创建时间:
2025-07-17



