Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics...

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Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University

Transcript of Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics...

Page 1: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Sampling Design, Spatial Allocation, and Proposed Analyses

Don Stevens

Department of Statistics

Oregon State University

Page 2: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Sampling Environmental Populations

• Environmental populations exist in a spatial matrix

• Population elements close to one another tend to be more similar than widely separated elements

• Good sampling designs tend to spread out the sample points more or less regularly

• Simple random sampling (SRS) tends to result in point patterns with voids and clusters of points

Page 3: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Sampling Environmental Populations

• Systematic sample has substantial disadvantages – Well known problems with periodic response – Less well recognized problem: patch-like

response– Inflexible point density doesn’t accommodate

• Adjustment for frame errors

• Sampling through time

Page 4: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Random-tessellation Stratified (RTS) Design

• Compromise between systematic & SRS that resolves periodic/patchy response

• Cover the population domain with a randomly placed grid

• Select one sample point at random from each grid cell

Page 5: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

RTS Design

• Does not resolve systematic sample difficulties with – variable probability (point density)– unreliable frame material– Sampling through time

Page 6: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Generalized Random-tessellation Stratified (GRTS) Design

• Design is based on a random function that maps the unit square into the unit interval.

• The random function is constructed so that it is 1-1 and preserves some 2-dimensional proximity relationships in the 1-dimensional image.

• Accommodates variable sample point density, sample augmentation, and spatially-structured temporal samples.

Page 7: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

x

B x s 0 f s x =

F(x)

s

y1

y2

yi

yM

.

.

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x1 x2 . . . xi . . . xM

quadrant-recursive, hierarchical random map

systematic sample

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x f s =

Page 8: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Spatial Properties Of Reverse

Hierarchical Ordered GRTS Sample • The complete sample is nearly regular, capturing much of the

potential efficiency of a systematic sample without the potential flaws.

• Any subsample consisting of a consecutive subsequence is almost as regular as the full sample; in particular, the subsequence.

, is a spatially well-balanced sample.

• Any consecutive sequence subsample, restricted to the accessible domain, is a spatially well-balanced sample of the accessible domain (critical for sediment sample).

for k 1 2 k = { , , ..., }, k MS s s s

Page 9: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Spatially Balanced Sample

• Assess spatial balance by variance of size of Voronoi polygons, compared to SRS sample of the same size.

• Voronoi polygons for a set of points:

The ith polygon is the collection of points in the domain that are closer to si than to any other sj in the set.

1 2 k{ , , ..., }s s s

Page 10: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Voronoi Polygons

GRTS SampleUniform Sample

Page 11: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.
Page 12: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Sample Size

Effi

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of G

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esi

gn

0 10 20 30 40 50 60

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At n = 8, efficiency is 2.4

Page 13: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Sampling Through Time

• Detection of a signal that is small relative to noise magnitude requires replication

• Spatial replication (more samples per year) addresses spatial variation

• Need temporal replication (more years) to address temporal variation

• Detection of trend in slowly changing status requires many years

Page 14: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Sampling Through Time

• Repeat sampling of same site eliminates a variance component if the site retains its identity through time.

• Design based on assumption that sediment does retain identity, but water does not.

• Both water and sediment samples have spatial balance through time, but sediment sample includes revisits at 1, 5, and 10 year intervals.

Page 15: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Proposed Analyses

• Annual descriptive summaries– Mean values, proportions, distributions,

precision estimates based on annual data• Mean concentration confidence limits

• Percent area in non-compliance confidence limits

• Histograms

• Distribution function plots confidence limits

• Subpopulation comparisons

Page 16: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.
Page 17: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.
Page 18: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Proposed Analyses

• Composite estimation: Annual status estimates that incorporate prior data– Model that predicts current value at site s based on

prior observation: – Composite estimator is weighted combination of mean

of current observation and mean of predicted values based on prior observations

– Results in increased precision for annual estimates– Can also be used to “borrow strength” from spatially

proximate data

( , 1) ( ( , ))y s t f y s t

Page 19: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Proposed Analyses

• Trend Analyses.– Need to describe trend at the segment or Bay

level.– Usual approach: trend in mean value.– Also consider: trend in spatial pattern, trend in

population distribution, distribution of trend, and mean value of trend.

– Trend analyses will exploit repeat visit pattern for sediment samples.

Page 20: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Proposed Analyses

• Space-Time Models– Use random field approach to account for

correlation through space and time– Panel structure (repeat visits) in sediment

sample is a good structure to estimate space-time correlation

– Long-term: need 10+ years to get sufficient data to estimate model parameters

Page 21: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Proposed Analyses

• Bayesian Hierarchical Models– Good way to incorporate ancillary information

into status estimates• E.g., loading estimates, flow data, metrological data

– Distribution of response is modeled as a function of parameters whose distribution in turn depends on ancillary data, hence, “hierarchical”

Page 22: Sampling Design, Spatial Allocation, and Proposed Analyses Don Stevens Department of Statistics Oregon State University.

Proposed Analyses

• Spatial displays– Contour plots– Perspective plots– Hexagon mosaic plots– Multivariate displays

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