Title: TRENDS OVER TIME IN ECOLOGICAL RESOURCES OF A REGION
1 2DESIGNING PANEL SURVEYSSPECIFICALLY RELEVANT TO
NATIONAL PARKSIN THE NORTHWEST
- N. Scott Urquhart
- Senior Research Scientist
- Department of Statistics
- Colorado State University
- Fort Collins, CO 80527-1877
3INFERENCE PERSPECTIVES
- Design Based
- Inferences rest on the probability structure
incorporated in the sampling plan - Completely defensible very minimal assumptions
- Limiting relative to using auxiliary information
- Model Assisted
- Uses models to compliment underlying sampling
structure - Has opportunities for use of auxiliary
information - Model Based (eg spatial statistics)
- Ignores sampling plan
- Defensibility lies in defense of model
4APPROACH OF THIS PRESENTATION
- Use tools from the arena of
- Model assisted and
- Model based analyses
- To study the performance of
- Design based
- Model-assisted analyses
- WHY?
- Without models,
- performance evaluations need simulation
- Before substantial data have been gathered
- No basis for values to enter into simulation
studies
5STATUS TRENDS OVER TIME IN ECOLOGICAL
RESOURCES OF A REGIONMAJOR POINTS
- Regional trend ¹ site trend
- Detection of trend requires substantial elapsed
time - Regional OR intensive site
- Almost all indicators have substantial patterns
in their variability - Design to capitalize on this dont fight it.
- Minimize effect of site variability with planned
revisits specific plans will be illustrated - Design tradeoffs TREND vs STATUS
6REGIONAL TREND ¹ SITE TREND
- The predominant theme of ecology
- Ecological processes
- How does a specific kind of ecosystem function
- Energy flows
- Food webs
- Nutrient cycling
- Most studies of such functions must be temporally
- Temporally intensive
- What material goes from where to where?
- Consequently spatially restrictive
- In this situation Temporal trend site trend
7REGIONAL TREND ¹ SITE TREND( - CONTINUED)
- The predominant theme of ecology versus
- A Substantial (any) Agency Focus
- All of an ecological resource
- In an area or region
- Across all of the variability present there
- Most government regulations
- Apply to a whole area or region
- Only a few apply to specific sites
- The definition of a region certainly depends on
what agency makes the regulation
8REGIONAL TREND ¹ SITE TREND( - CONTINUED - III)
- The predominant theme of ecology versus
- A substantial agency (EPA) focus
- An entire region, like
- Lakes in the Adirondack Mountains
- All lakes in Northeastern US
- All (wadeable) streams the mid-Appalachian
Mountains - Or National Park Service
- All riparian areas in Olympic National Park
- All riparian areas in National Parks in the
coastal Northwest
9TREND ACROSS TIME - What is it?
- Any response which changes across time in a
generally - Increasing or
- Decreasing
- Manner shows trend
- Monotonic change is not essential.
- If trend of this sort is present, it will be
detectable as linear trend. - This does NOT mean trend must be linear
(examples follow) - Any specified form is detectable
- Time years, here
10TREND ACROSS TIME - What is it?(continued)
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12TREND DETECTION REQUIRES SUBSTANTIAL ELAPSED TIME
- IT IS NEARLY IMPOSSIBLE TO DETECT TREND IN LESS
THAN FIVE YEARS. WHY?
13BIOLOGICAL INDICATORS HAVE SOMEWHAT MORE
VARIABILITY THAN PHYSICAL INDICATORS BUT THIS
VARIES, TOO
- Subsequent slides show the relative amount of
variability - Ordered by the amount of residual variability
least to most (aquatic responses) - Acid Neutralizing Capacity
- Ln(Conductance)
- Ln(Chloride)
- pH(Closed system)
- Secchi Depth
- Ln(Total Nitrogen)
- Ln(Total Phosphorus)
- Ln(Chlorophyll A)
- Ln( zooplankton taxa)
- Ln( rotifer taxa)
- Maximum Temperature
And others, both aquatic and terrestrial
14IMPORTANT COMPONENTS OF VARIANCE
-
- POPULATION VARIANCE
- YEAR VARIANCE
- RESIDUAL VARIANCE
15IMPORTANT COMPONENTS OF VARIANCE ( - CONTINUED)
- POPULATION VARIANCE
- Variation among values of an indicator (response)
across all sites in a park or group of related
parks, that is, across a population or
subpopulation of sites
16IMPORTANT COMPONENTS OF VARIANCE ( - CONTINUED II)
- YEAR VARIANCE
- Concordant variation among values of an indicator
(response) across years for ALL sites in a
regional population or subpopulation - NOT variation in an indicator across years at a
single site - Detrended remainder, if trend is present
- Effectively the deviation away from the trend
line (or other curve)
17IMPORTANT COMPONENTS OF VARIANCE ( - CONTINUED -
III)
- Residual component of variance
- Has several contributors
- YearSite interaction
- This contains most of what ecologists would call
year to year variation, i.e. the site specific
part - Index variation
- Measurement error
- Crew-to-crew variation (minimize with documented
protocols and training) - Local spatial protocol variation
- Short term temporal variation
18SOURCE OF DATA FOR ESTIMATES OF COMPONENTS OF
VARIANCE
- EMAP Surface Waters Northeast Lakes Pilot
1991 - 1994 - About 450 observations
- Over four years
- Including about 350 distinct lakes
- Design allowed estimation of several residual
components
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20SOURCE OF COMPONENTS OF VARIANCE FROM NW HABITAT
- Oregon Department of Fisheries and Wildlife
stream habitat survey - GRADIENT Stream gradient measured on site
- WIDTHÂ Wetted stream width
- ACW Active Channel
- ACH Active Channel Height
- UNITS100 Number of distinct habitat units per
100 meters of stream length - NOPOOLS Number of pools in the surveyed reach
- POOLS100 Number of pools per 100 meters
- PCTPOOL of reach length in pools
- PCTFINES stream substrate that is sand or
finer particle size - PCTGRAVEL of stream stubstrate that is gravel
sized particles - RIFSNDOR of riffle stream length that is sand
or finer particle size - RIFGRAV of riffle stream length that is
gravel sized particles - SHADE stream channel shaded
- LOG(PIECESLWD 0.01) Number of pieces of large
woody debris per 100 meters. - LOG(VOLUMELWD 0.01) Volume of large woody
debris (m3/100 meters) - RESIDPD Volume of residual pools (pools
remaining if streamflow stopped)
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22SOURCE OF COMPONENTS OF VARIANCE FROM GRAND CANYON
- Grand Canyon Monitoring and Research Center
- Effects of Glen Canyon Dam on the near River
Habitat in the Grand Canyon - At various heights above the river
- Height is measured as the height of the rivers
water at various flow rates - Eg 15K cfs, 25K cfs, 35K cfs, 45K cfs 60K
cfs - Using first two years data
- Mike Kearsley UNA
- Design spatially balanced
- With about 1/3 revisited
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24ALL VARIABILITY IS OF INTEREST
- The site component of variance is one of the
major descriptors of the regional population - The year component of variance often is small to
small to estimate. It is a major enemy for
detecting trend over time. - If it has even a moderate size, sample size
reverts to the number of years. - In this case, the number of visits and/or number
of sites has no practical effect.
25ALL VARIABILITY IS OF INTEREST( - CONTINUED)
- Residual variance characterizes the inherent
variation in the response or indicator. - But some of its subcomponents may contain useful
management information - CREW EFFECTS gt training
- VISIT EFFECTS gt need to reexamine definition
of index (time) window or evaluation protocol - MEASUREMENT ERROR gt work on laboratory/measurem
ent problems
26DESIGN TRADE-OFFS TREND vs STATUS
- How do we detect trend in spite of all of this
variation? - Recall two old statistical friends.
- Variance of a mean, and
- Blocking
27DESIGN TRADE-OFFS TREND vs STATUS( - CONTINUED)
- VARIANCE OF A MEAN
- Where m members of the associated population
have been randomly selected and their response
values averaged. - Here the mean is a regional average slope, so
"s2" refers to the variance of an estimated
slope ---
28DESIGN TRADE-OFFS TREND vs STATUS( - CONTINUED
- II)
- Consequently
- Becomes
- Note that the regional averaging of slopes has
the same effect as continuing to monitor at one
site for a much longer time period.
29DESIGN TRADE-OFFS TREND vs STATUS( - CONTINUED
- III)
- Now, s2, in total, is large.
- If we take one regional sample of sites at one
time, and another at a subsequent time, the site
component of variance is included in s2. - Enter the concept of blocking, familiar from
experimental design. - Regard a site like a block
- Periodically revisit a site
- The site component of variance vanishes from the
variance of a slope.
30NOW PUT IT ALL TOGETHER
- Question What kind of temporal design should
you use for Northwest National Parks? - Well investigate two (families) of recommended
designs. - All illustrations will be based on 30 site
visits per year, as Andrea recommended. - General relations are uninfluenced by number of
sites visited per year, but specific performance
is. - Well use the panel notation Trent set out.
31RECOMMENDATION OF FULLER and BREIDT
- Based on the Natural Resources Inventory (NRI)
- Iowa State US Department of Agriculture
- Oriented toward soil erosion
- Changes in land use
- Their recommendation
- Pure panel 1-0 Always Revisit
- Independent 1-n Never Revisit
- Evaluation context
- No trampling effect remotely sensed data
- No year effects
- Administrative reality of potential variation in
funding from year to year
MATH RECOME 100 50 0 50
32TEMPORAL LAYOUT OF (1-0), (1-n)
YEAR 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20
1-0 X X X X X X X X X X X X X X X X X X X X
1-n X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
33FIRST TEMPORAL DESIGN FAMILY
1-0 30 20 10 0
1-n 0 10 20 30
ALWAYS REVISIT NEVER REVISIT
34POWER TO DETECT TRENDFIRST TEMPORAL DESIGN
FAMILY NO YEAR EFFECT
Always Revisit
Never Revisit
35POWER TO DETECT TRENDFIRST TEMPORAL DESIGN
FAMILY, MODEST ( SOME) YEAR EFFECT
36POWER TO DETECT TRENDFIRST TEMPORAL DESIGN
FAMILYBIG ( LOTS) YEAR EFFECT
37FOREST INVENTORY ANALYSIS (FIA) HAS A SYSTEMATIC
SPATIAL DESIGN WITH 1-9
YEAR 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21
FIA X X X
- Doesnt match up well with 1-0 and 1-n
- We need to investigate alternatives
38SERIALLY ALTERNATING TEMPORAL DESIGN (1-3)4
SOMETIMES USED BY EMAP
YEAR 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21
FIA X X X
(1-3)4 X X X X X X
X X X X X
X X X X X
X X X X X
39SERIALLY ALTERNATING TEMPORAL DESIGN (1-3)4
SOMETIMES USED BY EMAP
YEAR 1 2 3 4 5 6 7 8 9 10 11
FIA X X
(1-3)4 X X X
X X X
X X X
X X
- Unconnected in an experimental design sense
- Very weak design for estimating year effects, if
present
40SPLIT PANEL (1-4)5 , ---
YEAR 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21
FIA X X X
(1-4)5 X X X X X
X X X X
X X X X
X X X X
X X X X
- AGAIN, Unconnected in an experimental design
sense - Matches better with FIA
- Still a very weak design for estimating year
effects, if present
41SPLIT PANEL (1-4)5 ,(2-3)5
YEAR 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21
FIA X X X
(1-4)5 X X X X X
X X X X
X X X X
X X X X
X X X X
(2-3)5 X X X X X X X X X
X X X X X X X X
X X X X X X X X
X X X X X X X X
X X X X X X X X
- This Temporal Design IS connected
- Has three panels which match up with FIA
42SECOND TEMPORAL DESIGN FAMILY
1-4 30 20 10 0
2-3 0 5 10 15
43POWER TO DETECT TRENDSECOND TEMPORAL DESIGN
FAMILY NO YEAR EFFECT
44POWER TO DETECT TRENDSECOND TEMPORAL DESIGN
FAMILYSOME YEAR EFFECT
45POWER TO DETECT TRENDSECOND TEMPORAL DESIGN
FAMILYLOTS OF YEAR EFFECT
46COMPARISON OF POWER TO DETECT TRENDDESIGN 1 2
ROWS
YEAR EFFECT NONE
SOME
LOTS
47POWER TO DETECT TRENDVARYING YEAR EFFECT AND
TEMPORAL DESIGN
48STANDARD ERROR OF STATUSTEMPORAL DESIGN 1, NO
YEAR EFFECT
TOTAL OF 30 SITES
110 SITES VISITED BY YEAR 5
410 SITES VISITED BY YEAR 20
49STANDARD ERROR OF STATUSTEMPORAL DESIGN 1, SOME
YEAR EFFECT
50STANDARD ERROR OF STATUSTEMPORAL DESIGN 1, LOTS
OF YEAR EFFECT
51STANDARD ERROR OF STATUSTEMPORAL DESIGN 2, NO
YEAR EFFECT
TOTAL OF 75 SITES
TOTAL OF 150 SITES
52STANDARD ERROR OF STATUSTEMPORAL DESIGN 2, SOME
YEAR EFFECT
53STANDARD ERROR OF STATUSTEMPORAL DESIGN 2, LOTS
OF YEAR EFFECT
54SO WHAT?
- Regardless of evaluation circumstances,
- Trend detection improves the more the same sites
are revisited - Status estimation improves as the number of
distinct sites visited increases - Temporal design 2 is better than temporal design
1 in relevant cases - Its power is only slightly influenced by split
between panels
55METADATA
- Really important for your successors
- Like your grandchildrens generation
- Ill comment about this later in the conference
if you want me to
56FUNDING ACKNOWLEDGEMENT
The work reported here today was developed under
the STAR Research Assistance Agreement CR-829095
awarded by the U.S. Environmental Protection
Agency (EPA) to Colorado State University. This
presentation has not been formally reviewed by
EPA. The views expressed here are solely those
of presenter and STARMAP, the Program he
represents. EPA does not endorse any products or
commercial services mentioned in this
presentation.
57TEMPORAL DESIGN 1ALWAYS REVISIT
58TEMPORAL DESIGN 2NEVER REVISIT
59TEMPORAL DESIGN 3AUGMENTED SERIALLY ALTERNATING
60TEMPORAL DESIGN 4 SPLIT PANELSERIALLY
ALTERNATINGPLUS SERIALLY ALTERNATING WITH
CONSECUTIVE YEAR REVISITS
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