Improving Estimates of Bird Density Using Multiple- Covariate Distance Sampling

Author:

Marques Tiago A.12,Thomas Len1,Fancy Steven G.3,Buckland Stephen T.1

Affiliation:

1. Centre for Research into Ecological and Environmental Modelling, The Observatory, University of St. Andrews, St. Andrews KY16 9LZ, Scotland

2. Centro de Estatística e Aplicações da Universidade de Lisboa, Bloco C2, Campo Grande, 1749-016 Lisboa, Portugal

3. National Park Service, Office of Inventory, Monitoring, and Evaluation, 1201 Oak Ridge Drive, Suite 150, Fort Collins, Colorado 80525, USA

Abstract

Abstract Inferences based on counts adjusted for detectability represent a marked improvement over unadjusted counts, which provide no information about true population density and rely on untestable and unrealistic assumptions about constant detectability for inferring differences in density over time or space. Distance sampling is a widely used method to estimate detectability and therefore density. In the standard method, we model the probability of detecting a bird as a function of distance alone. Here, we describe methods that allow us to model probability of detection as a function of additional covariates—an approach available in DISTANCE, version 5.0 (Thomas et al. 2005) but still not widely applied. The main use of these methods is to increase the reliability of density estimates made on subsets of the whole data (e.g., estimates for different habitats, treatments, periods, or species), to increase precision of density estimates or to allow inferences about the covariates themselves. We present a case study of the use of multiple covariates in an analysis of a point-transect survey of Hawaii Amakihi (Hemignathus virens). Amélioration des estimations de densité d’oiseaux par l’utilisation de l’échantillonnage par la distance avec covariables multiples

Publisher

Oxford University Press (OUP)

Subject

Animal Science and Zoology,Ecology, Evolution, Behavior and Systematics

Reference22 articles.

1. Multiple-species analysis of point count data: A more parsimonious modelling framework.;Alldredge;Journal of Applied Ecology,2007

2. Detectability analysis in transect surveys.;Beavers;Journal of Wildlife Management,1998

3. Bird Census Techniques, 2nd ed.;Bibby,2000

4. Point-transect surveys for songbirds: Robust methodologies.;Buckland;Auk,2006

5. Introduction to Distance Sampling.;Buckland,2001

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