Field evaluation of abundance estimates under binomial and multinomial N-mixture models

被引:12
作者
Botsch, Yves [1 ]
Jenni, Lukas [1 ]
Kery, Marc [1 ]
机构
[1] Swiss Ornithol Inst, Seerose 1, CH-6204 Sempach, Switzerland
关键词
abundance estimation; cavity nesters; detection probability; forest birds; territory assignment; unmarked; POPULATION; TERRITORIES; SIZE;
D O I
10.1111/ibi.12802
中图分类号
Q95 [动物学];
学科分类号
071002 ;
摘要
Assessing and modelling abundance from animal count data is a very common task in ecology and management. Detection is arguably never perfect, but modern hierarchical models can incorporate detection probability and yield abundance estimates that are corrected for imperfect detection. Two variants of these models rely on counts of unmarked individuals, or territories (binomial N-mixture models, or binmix), and on detection histories based on territory-mapping data (multinomial N-mixture models or multimix). However, calibration studies which evaluate these two N-mixture model approaches are needed. We analysed conventional territory-mapping data (three surveys in 2014 and four in 2015) using both binmix and multimix models to estimate abundance for two common avian cavity-nesting forest species (Great Tit Parus major and Eurasian Blue Tit Cyanistes caeruleus). In the same study area, we used two benchmarks: occupancy data from a dense nestbox scheme and total number of detected territories. To investigate variance in estimates due to the territory assignment, three independent ornithologists conducted territory assignments. Nestbox occupancy yields a minimum number of territories, as some natural cavities may have been used, and binmix model estimates were generally higher than this benchmark. Estimates using the multimix model were slightly more precise than binmix model estimates. Depending on the person assigning the territories, the multimix model estimates became quite different, either overestimating or underestimating the 'truth'. We conclude that N-mixture models estimated abundance reliably, even for our very small sample sizes. Territory-mapping counts depended on territory assignment and this carried over to estimates under the multimix model. This limitation has to be taken into account when abundance estimates are compared between sites or years. Whenever possible, accounting for such hidden heterogeneity in the raw data of bird surveys, via including a 'territory editor' factor, is recommended. Distributing the surveys randomly (in time and space) to editors may also alleviate this problem.
引用
收藏
页码:902 / 910
页数:9
相关论文
共 40 条
  • [31] Robust estimation of snare prevalence within a tropical forest context using N-mixture models
    O'Kelly, Hannah J.
    Rowcliffe, J. Marcus
    Durant, Sarah M.
    Milner-Gulland, E. J.
    BIOLOGICAL CONSERVATION, 2018, 217 : 75 - 82
  • [32] Estimating abundance from bird counts:: Binomial mixture models uncover complex covariate relationships
    Kery, Marc
    AUK, 2008, 125 (02): : 336 - 345
  • [33] Estimating prey abundance and distribution from camera trap data using binomial mixture models
    Hemanta Kafley
    Babu R. Lamichhane
    Rupak Maharjan
    Bishnu Thapaliya
    Nishan Bhattarai
    Madhav Khadka
    Matthew E. Gompper
    European Journal of Wildlife Research, 2019, 65
  • [34] Coping With Heterogeneity to Detect Species on a Large Scale: N-Mixture Modeling Applied to Red-Legged Partridge Abundance
    Jakob, Christiane
    Ponce-Boutin, Francoise
    Besnard, Aurelien
    JOURNAL OF WILDLIFE MANAGEMENT, 2014, 78 (03) : 540 - 549
  • [35] Estimating transient populations of unmarked individuals at a migratory stopover site using generalized N-mixture models
    Kwon, Eunbi
    Houghton, Lawrence M.
    Settlage, Robert E.
    Catlin, Daniel H.
    Karpanty, Sarah M.
    Fraser, James D.
    JOURNAL OF APPLIED ECOLOGY, 2018, 55 (06) : 2917 - 2932
  • [36] Simulation-based assessment of dynamic N-mixture models in the presence of density dependence and environmental stochasticity
    Bellier, Edwige
    Kery, Marc
    Schaub, Michael
    METHODS IN ECOLOGY AND EVOLUTION, 2016, 7 (09): : 1029 - 1040
  • [37] Optimising monitoring efforts for secretive snakes: a comparison of occupancy and N-mixture models for assessment of population status
    Ward, Robert J.
    Griffiths, Richard A.
    Wilkinson, John W.
    Cornish, Nina
    SCIENTIFIC REPORTS, 2017, 7
  • [38] An evaluation of the Bayesian approach to fitting the N-mixture model for use with pseudo-replicated count data
    Toribio, S. G.
    Gray, B. R.
    Liang, S.
    JOURNAL OF STATISTICAL COMPUTATION AND SIMULATION, 2012, 82 (08) : 1135 - 1143
  • [39] RELIABILITY OF OCCUPANCY AND BINOMIAL MIXTURE MODELS FOR ESTIMATING ABUNDANCE OF GOLDEN-CHEEKED WARBLERS (SETOPHAGA CHRYSOPARIA)
    Hunt, Jason W.
    Weckerly, Floyd W.
    Ott, James R.
    AUK, 2012, 129 (01): : 105 - 114
  • [40] LARGE-SCALE MONITORING OF SHOREBIRD POPULATIONS USING COUNT DATA AND N-MIXTURE MODELS: BLACK OYSTERCATCHER (HAEMATOPUS BACHMANI) SURVEYS BY LAND AND SEA
    Lyons, James E.
    Royle, J. Andrew
    Thomas, Susan M.
    Elliott-Smith, Elise
    Evenson, Joseph R.
    Kelly, Elizabeth G.
    Milner, Ruth L.
    Nysewander, David R.
    Andres, Brad A.
    AUK, 2012, 129 (04): : 645 - 652