Title: DEVELOPMENTS IN TREND DETECTION IN AQUATIC SURVEYS
1DEVELOPMENTS IN TREND DETECTION IN AQUATIC
SURVEYS
- N. Scott Urquhart
- STARMAP Program Director
- Department of Statistics
- Colorado State University
2PATH FOR TODAY
- Review a model I have used to project power of
EMAP-type revisit or temporal designs - Recent developments
- Impact of removing planned revisits Grand
Canyon - Power of differences in trend Oregon plan
others - Generalize model to allow distribution of trends
- Each part has different collaborators
3A SIMPLE MODEL for a SURVEYED ECOLOGICAL RESPONSE
- Consistent with annual or less frequent
observation - Represent the response time series by an
annual departure - Represent space by a site effect only
- Allow sites to be visited in panels
- Regard trends across time as a contrast over
the panel by annual response means
4A STATISTICAL MODEL
where i INDEXES PANELS 1, 2, ... , s (all
sites in a panel have the same revisit
pattern) j INDEXES TIME PERIODS ( years in
EMAP) k INDEXES SITES WITHIN A PANEL 1, 2, ...
, ni and (uncorrelated)
5A STATISTICAL MODEL - continued
- Consider the entire table of the panel by
time-period means, - Without regard to, as yet, whether the design
prescribes gathering data in any particular cell - Ordered by panel within time period (column wise)
With this ordering, we get
6STATISTICAL MODEL - continued
-
- Now let X denote a regressor matrix containing
a column of 1s and a column of the numbers of
the time periods. The second element of - contains an estimate of trend.
7STATISTICAL MODEL - continued
- But this estimate of b cannot be used because
it is based on values which, by design, will
not be gathered. - Reduce X, Y and F to X, Y, and F, where
these represent that subset of rows and columns
from X, Y, and F corresponding to where data
will be gathered. Then
8A STANDARDIZATION
- Note thatcan be rewritten as
- Consequently power, a measure of sensitivity,
can be examined relative to
9TOWARD POWER
- Trend continuing, or monotonic, change.
Practically, monotonic trend can be detected by
looking for linear trend. - We will evaluate power in terms of ratios of
variance components and where this denominator
depends on the ratios of variance components
and the revisit or temporal design.
10POWER REFERENCE
- Urquhart, N. S., S. G. Paulsen and D. P. Larsen.
(1998). Monitoring for policy-relevant
regional trends over time. Ecological
Applications 8 246 - 257.
11DESIGN and POWER ofVEGETATION MONITORING
STUDIESforTHE RIPARIAN ZONE NEAR THE COLORADO
RIVER in THE GRAND CANYON
- COOPERATORS
- Mike Kersley, University of Northern Arizona, and
- Steven P. Gloss, Program Manager-Biological
Resources - Grand Canyon Monitoring Research Center, USGS
12POWER TO DETECT TREND IN VEGETATION COVER,ZONE
15, VARYING TREND
1, 2, 3 5 PER YEAR
13TODAYS PATH
- Bit of historical background
- Distribution of sample sites along river
- Inquiry about your stat backgrounds
- Variation and its structure
- Power
- Responses
- Zone
- Responses to some questions asked during oral
presentation - How the sample sites were selected
- How the power was calculated
14VIEW DOWN TRANSECT AT MILE 12.3
15MARKING TRANSECT AT MILE 12.3
16MIKE SCOTT AT THE END!
17CLIFF AT MILE 135.2(PARTIAL HEIGHT)
18LOCATION OF SITES BY RIVER MILE
Revisit Sites
2002 Sites
2001 Sites
19RESPONSE SIZE AND VARIATION
- Data 2001 2002, including revisit sites
- Vegetation cover
- Other responses, but not discussed here
- Analysis model
- River Width (fixed)
- Year (random) proxy for roughness of immediate
terrain - Station river mile (random)
- Residual Year by Station interaction/remainder
20MEAN and STANDARD DEVIATIONof VEGETATION COVER
vs ZONE (RIVER FLOW LEVEL)
21STRUCTURE OF VARIANCE
- The common formulas for estimating
(computing) variance assume UNCORRELATED data. - Reality This rarely is true.
- Examples -
- Data from the same SITE, but different years
are correlated - Data from the same YEAR, but different years are
correlated - Total variance var(site) var(year)
var(residual) - Subsequent figures show this
22COMPONENTS of VARIANCE of VEGETATION COVERSITE,
YEAR, and RESIDUAL
23SAMPLE SIZE ASSUMPTIONSFOR POWER
- 25 revisit sites
- Revisited annually
- 30 sites to be visited on a three-year rotating
cycle - Augmented Rotating Panel Design
24POWER TO DETECT TREND IN VEGETATION COVER,ZONE
15, VARYING TREND
1, 2, 3 5 PER YEAR
25RESPONSE TO A QUESTION
- What would be the effect of revisiting sites
only in alternating years after the first? - Response 1 My greatest concern would be
retaining the skills and knowledge of those
doing the evaluations. (Changing personnel
would almost certainly change response
definitions in subtle, but unrecognized ways.) - Response 2 Power to detect trend would be
delayed somewhat. (Actually a bit more than I
initially thought!) - This is illustrated in the next two slides.
26ALTERNATE REVISIT PLAN and SAMPLE SIZES
ASSUMPTIONS FOR POWER
- 25 revisit sites
- Revisited annually, for first three years (as
planned), then in alternating years - 30 sites to be visited on a three-year rotating
cycle - A revisit plan with no specific name
27POWER TO DETECT TREND (2PER YEAR) IN COVER by
ZONE and REVISIT PLANS CURRENT n ALTERNATE
l
28OBSERVATIONS RELATIVE TO POWER UNDER THE BIANNUAL
REVISIT PLAN
- The loss of power for biannual revisits compared
to the augmented serially alternating design has
some noteworthy characteristics - Power is the order of a quarter to a third for
all years less than a decade. - The time required to get to a given level of
power is extended by 3-5 years in the biannual
revisit design. - The "years" on the x-axis represents the starting
point for ANY comparison - Power accrues from accumulating data, elapsed
time, and accumulating trend - Detection of moderate trends requires a
commitment to the continuing acquisition
consistent and comparable data. - These power evaluations DO NOT relate to
comparing years 10 to 11, or any specific two
years.
29MODEL ADAPTATION
- Have a set of panels for the untreated sites,
another for the treated sites. - Change X, but not Yor F
30POWER TO DETECT DIFFERENCES IN TREND(BETWEEN
TREATED and UNTREATED)
- COOPERATORS
- Phil Larsen, WED
- (Part of a presentation for the American
Fisheries Society next week) - Oregon Plan Team
31SOURCE OF ESTIMATES OF VARIANCE COMPONENTS
- Data source -----
- Response is log of large woody debris
- Log10(LWD0.1)
- Variance components values were selected as low
and high - All plans assume annual revisit
- Number of sites in each set 5, 10, 15, 20, 25
32ALL POWER CURVES SET 1 (8/16/05)
33POWER CURVES FOR DETECTING DIFFERENCES IN
TREND(LOW VALUES OF VARIANCE COMPONENTS)
34POWER CURVES FOR DETECTING DIFFERENCES IN
TREND(HIGH VALUES OF VARIANCE COMPONENTS)
35POWER CURVES FOR DETECTING DIFFERENCES IN
TREND(LOW vs HIGH VALUES OF VARIANCE COMPONENTS,
n 10 EACH)
36POWER CURVES n 20ALWAYS REVISIT SAME SITES
versus AUGMENTED SERIALLY ALTERNATING FOR HIGH
VALUES OF VARIANCE COMPONENTS
37POWER CURVES FOR HIGH VALUES OF VARIANCE
COMPONENTS AUGMENTED ROTATING PANEL DESIGN
38TOWARD POWER TO DETECT REGIONAL TRENDWHEN TREND
VARIES BY SITE
- COOPERATORS
- Phil Larsen, WED, EPA
- Tim Gerrodette, National Marine Fisheries
Service, Southwest Science Center, La Jolla, CA - Dawn Van Leeuwen, New Mexico State Univ
- Will use Oregon Plan data
39INITIAL SIMPLIFYING CONDITIONS
- Every site in a region is revisited every year,
and - Some relevant response is evaluated.
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44WHERE NEXT WITH RANDOM SLOPES?
- Model adapts to matrices and varied revisit
plans - should be incorporated into power
calculations - Estimate magnitude of
- Montana Bull Trout
- Various Oregon Plan responses
- Develop web-based software
- This is where Tim Gerrodette enters This
generalizes something he did earlier