Title: Population Sampling
1Population Sampling
2Common failures in monitoring programs (Elzinga
et al. 2002)
- Technical problems
- Poor design leads to inconclusive results
- Use of multiple or unreliable observers
complicates interpretation of results - Data are lost (including inability to interpret
datasheets) - Data are not analyzed
- Natural system fluctuation obscures change caused
by management - Institutional problems
- Premature termination of monitoring
- Inadequate resources to collect or analyze data
- Managers refuse to use monitoring data to make
decisions - Failure to place monitoring within a management
framework leads to perception (or reality) that
the data are irrelevant
3Population vs. Sample
True Population
Sample
4Confidence intervals
- Measure of precision
- 95 CI commonly used
- 95 chance that the true mean is in the CI
(Bayesian) - If the sampling process is repeated many times,
the the CI will cover the true mean 95 of the
time (Frequentist)
5Accuracy Precision Bias
Imprecise without bias
Precise with bias
Bias Does the mean of the estimates converge
to the true value? Precision How variable are
the estimates?
6Pseudo-Replication
- A term often used in experimental studies, but
also occurs when sampling natural populations, - Replicate samples are the smallest units to which
treatments are independently applied, - When there is pseudo-replication, there is
dependency among the replicated samples (beyond
the treatments!),
7Hypothetical Population
8Clearly defined target population
- Biological population of interest
- Must be well defined in
- Spatial extent
- County, State, Region
- Habitat extent Streams, rivers, ponds...
- Temporal extent Season, month,
- Sampled population should be representative of
target population - Encompass spatial range
- Encompass habitat range
- Encompass temporal scale of population processes
- Sampled population should account for spatial and
temporal aggregation of target population.
9Random Sampling
- Good statistical properties
- Can be time-consuming to locate sites
- May miss some habitats
- Many sites may be empty
10- Select qualitatively different habitats of
interest strata - Sample randomly within each stratum
- Effort may vary among strata
- Mean is weighted mean of the individual strata
(weighted by stratum area) - CI calculation is moderately complex see
Greenwood pp. 104-105.
Stratified Random Sampling
- Guarantees coverage of all habitat types
- Allows focused effort where it is most valuable
high density, variability, area
11- Biased if sampling grid matches environmental
periodicity - Urban environments
- Estimated confidence intervals may be too small
Systematic sampling
12Sampling schemes to avoid
- Haphazard neither random nor systematic e.g.
the first bush seen in a field - Accessibility sites that are easy to get to
- Judgment sites that are deemed typicalOnly
advantage of these is lowered cost of locating
sites
13Sample Methods
- Direct Counts
- Trap, Quadrat, transect
- Assesses density, CPUE
- Mark-Recapture
- Plotless
14DIRECT COUNTS
TRAP
- Station that captures or records passage of
mobile animal - Live traps, sticky traps, nets, automatic camera
- For baited trap, need to know area of attraction
of bait
- Count all individuals in sample unit
- Difficult when organisms abundant (aerial surveys
of wildebeest herds) - Can leads to undercounts if some individuals are
cryptic - Can leads to over-counts if the same individuals
are counted twice or more
15Quadrat
- Useful for small sessile organisms
http//simp.ucsc.edu/Sites/Images/quadrats/pp1mqua
d.jpg
16Transect
- Long line sampled continuously or at regular
intervals - Belt transect long narrow quadrat
- Line intercept count all individuals touched by
line - Line transect count everything seen, correcting
for distance
17Line transect sampling
- For each individual sighted, record
- Distance from observer
- Angle from transect line
- Calculate distance from transect line
di zi sin ?i
transect
?i
zi
18Sighting probability declines with distance
- Fit a function (g(x) probability of
sighting at distance x) to data on number seen at
various distances
Wallaroo in Queensland
McCallum (2000)
19Estimating density with line transect
- Integral of g(x) gives the average probability of
sighting over the entire width of the transect - It is also the effective strip width (ESW) of the
transect - Density is D n / (2LESW)
- n number sighted
- L transect length
20POPULATION INDEX
- Number observed or captured for a known effort
- Catch per unit effort (CPUE)
- captured per 100 trap-nights
- seen by observer in 30 seconds
- Often assumed to be proportional to abundance,
but usually has power relation - Recalibration needed when technology or observer
changes
21MARK-RECAPTURE
- Capture and mark known of individuals
- 2nd round of captures soon after
- Time for mixing, but not mortality
- Fraction of marked individuals in recapture
sample is estimate of the proportion of
population marked in first capture
22Lincoln-Peterson index
Mark
Recapture
23Marking methods
- Paint or dye
- Color band
- birds
- Unique markings
- Large mammals keep photo record
- Toe clipping
- Reptiles, amphibians, rodents
(NPS 2000)
(Sutherland 1996)
24Plotless
- Select random individual or location and measure
distance to nearest neighbor - Good for trees, shrubs
- Sutherland pp. 60-62
(Greenwood 1996)
25Resources
- Buckland, S.T., Anderson, D.R., Burnham, K.P. and
Laake, J.L. 1993. Distance Sampling Estimating
Abundance of Biological Populations. Chapman and
Hall, London, reprinted 1999 by RUWPA, University
of St. Andrews, Scotland. 446pp. Available online
at http//www.colostate.edu/depts/coopunit/distanc
ebook/download.html. - Elzinga, C.L., D.W. Salzer, J.W. Willoughby, and
J.P. Gibbs. 2002. Monitoring plant and animal
populations. Blackwell Science, Malden, NY. - Hayek, L.-A. C., and M. A. Buzas. 1997. Surveying
Natural Populations. Columbia University Press,
New York. - Henderson,P.A. 2003. Practical Methods in Ecology
Blackwell, Oxford. - Hilborn, R., and M. Mangel. 1997. The Ecological
Detective Confronting Models with Data.
Princeton University Press, Princeton, NJ. - McCallum, H. 2000. Population Parameters
Estimation for Ecological Models. Blackwell,
Oxford. - New, T. R. 1998. Invertebrate Surveys for
Conservation. Oxford University Press, Oxford.
26Resources
National Park Service (NPS). 2000. Glacier Bay
National Park and Preserve Humpback Whales.
Online document at http//www.nps.gov/glba/learn/
preserve/projects/whale/index.htm Schmitt, R. J.,
and C. W. Osenberg, eds. 1996. Detecting
Ecological Impacts Concepts and Applications in
Coastal Habitats. Academic Press, San
Diego. Sutherland, W. J., ed. 1996. Ecological
Census Techniques A Handbook. Cambridge
University Press, Cambridge, UK. Thompson, W. L.,
G. C. White, and C. Gowan. 1998. Monitoring
Vertebrate Populations. Academic Press, San
Diego. Young, L. J., and J. H. Young. 1998.
Statistical Ecology A Population Perspective.
Kluwer Academic Publishers, Boston.