Power to detect trend in short-term time series of bird abundance

被引:0
|
作者
Thogmartin, Wayne E. [1 ]
Gray, Brian R. [1 ]
Gallagher, Maureen [2 ,3 ]
Young, Neal [2 ,4 ]
Rohweder, Jason J. [1 ]
Knutson, Melinda G. [1 ,5 ]
机构
[1] Upper Midwest Environm Sci Ctr, US Geol Survey, La Crosse, WI 54603 USA
[2] Big Muddy Natl Fish & Wildlife Refuge, US Fish & Wildlife Serv, Columbia, MO 65201 USA
[3] Appalachian Partnership Coordinat Off, US Fish & Wildlife Serv, Wise, VA 24293 USA
[4] Natl Resource Conservat Serv, USDA, Warrensburg, MO 64093 USA
[5] Regions 3 & 5 Biol Monitoring Team, US Fish & Wildlife Serv, La Crosse, WI 54603 USA
来源
CONDOR | 2007年 / 109卷 / 04期
关键词
floodplain habitat; Missouri River; point counts; Poisson regression; power; trend estimation; underdispersion;
D O I
10.1650/0010-5422(2007)109[943:PTDTIS]2.0.CO;2
中图分类号
Q95 [动物学];
学科分类号
071002 ;
摘要
Avian point counts for population monitoring are often collected over a short timespan (e.g., 3-5 years). We examined whether power was adequate (power >= 0.80) in short-duration studies to warrant the calculation of trend estimates. We modeled power to detect trends in abundance indices of eight bird species occurring across three floodplain habitats (wet prairies early successional forest, and mature forest) as a function of trend magnitude, sample size, and species-specific sampling and among-year variance components. Point counts (5 min) were collected from 365 locations distributed among 10 study sites along the lower Missouri River; counts were collected over the period 2002 to 2004. For all study species, power appeared adequate to detect trends in studies of short duration (three years) at a single site when exponential declines were relatively large in magnitude (more than -5% year(-1)) and the sample of point counts per year was >= 30. Efforts to monitor avian trends with point counts in small managed lands (i.e., refuges and parks) should recognize this sample size restriction by including point counts from offsite locations as a means of obtaining sufficient numbers of samples per strata. Trends of less than -5% year(-1) are not likely to be consistently detected for most species over the short term, but short-term monitoring may still be useful as the basis for comparisons with future surveys.
引用
收藏
页码:943 / 948
页数:6
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