Title: Erin E. Peterson
1Regional GIS-based Geostatistical Models for
Stream Networks
- Erin E. Peterson
- Postdoctoral Research Fellow
- CSIRO Mathematical and Information Sciences
Division - Brisbane, Australia
- May 18, 2006
2Space-Time Aquatic Resources Modeling and
Analysis Program
The work reported here was developed under 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. EPA does
not endorse any products or commercial services
mentioned in this presentation.
3Collaborators
Dr. David M. Theobald Natural Resource Ecology
Lab Department of Recreation Tourism Colorado
State University, USA Dr. N. Scott
Urquhart Department of Statistics Colorado State
University, USA Dr. Jay M. Ver Hoef National
Marine Mammal Laboratory, Seattle, USA Andrew A.
Merton Department of Statistics Colorado State
University, USA
4Overview
Introduction Background Develop and compare
geostatistical models Visualizing model
predictions Current and future research in SEQ
5Challenges
- Challenges are similar to states attempting to
comply with the Clean
Water Act - Anadromous Waters Catalog (AWC)
- Large number of water bodies within AK
- 20,000 unidentified anadromous water bodies
- Need spatially explicit, unambiguous field
observations of anadromous fish - Cost (time and ) of field surveys is high
- We recognize a pressing need for approaches
that predict the distribution of salmon in
Alaskas extensive unsurveyed freshwaters.
6My Goal
- Demonstrate a geostatistical methodology based on
- Coarse-scale GIS data
- Field surveys
- Predict stream characteristics for individual
segments throughout a region
7How are geostatistical models different from
traditional statistical models?
- Traditional statistical models (non-spatial)
- Residual error (e) is assumed to be uncorrelated
- e unexplained variability in the data
- Geostatistical models
- Residual errors are correlated through space
- Spatial patterns in residual error resulting from
unidentified process(es) - Model spatial structure in the residual error
- Explain additional variability in the data
- Generate predictions at unobserved sites
8Geostatistical Modeling
- Fit an autocovariance function to data
- Describes relationship between observations based
on separation distance
- 3 Autocovariance Parameters
- Nugget variation between sites as separation
distance approaches zero - Sill delineated where semivariance asymptotes
- Range distance within which spatial
autocorrelation occurs
9Distance Measures and Spatial Relationships
- Straight Line Distance (SLD)
- As the crow flies
10Distance Measures and Spatial Relationships
- Symmetric Hydrologic Distance (SHD)
- As the fish swims
11Distance Measures and Spatial Relationships
- Weighted asymmetric hydrologic distance (WAHD)
- As the water flows
- Incorporate flow direction flow volume
Ver Hoef, J.M., Peterson, E.E., and Theobald,
D.M. (2006) Spatial Statistical Models that Use
Flow and Stream Distance, Environmental and
Ecological Statistics, to appear.
12Distance Measures and Spatial Relationships
B
A
C
- Fit a mixture of covariances
- Based on more than one distance measure
Cressie, N., Frey, J., Harch, B., and Smith, M.
2006, Spatial Prediction on a River Network,
Journal of Agricultural, Biological, and
Environmental Statistics, to appear.
13Distance Measures and Spatial Relationships
14Dissolved Organic Carbon (DOC) Example
Demonstrate how a geostatistical methodology can
be used to identify ecologically significant
waters
- Example
- Develop and compare geostatistical models for DOC
- Predict regional DOC levels
- Identify the spatial location of stream segments
with high levels of DOC
15Maryland Biological Stream Survey (MBSS) Data
Study Area
16Functional Linkage of Watersheds and Streams
(FLoWS)
- Create data for geostatistical modeling
- Calculate watershed covariates for each stream
segment - Calculate separation distances between sites
- SLD, Asymmetric hydrologic distance (AHD)
- Calculate the spatial weights for the WAHD
- Convert GIS data to a format compatible with
statistics software - FLoWS website http//www.nrel.colostate.edu/proje
cts/starmap -
17Spatial Weights for WAHD
- Proportional influence (PI) influence of each
neighboring survey site on a downstream survey
site - Weighted by catchment area Surrogate for flow
volume
18Spatial Weights for WAHD
- Proportional influence (PI) influence of each
neighboring survey site on a downstream survey
site - Weighted by catchment area Surrogate for flow
volume
survey sites stream segment
19Spatial Weights for WAHD
- Proportional influence (PI) influence of each
neighboring survey site on a downstream survey
site - Weighted by catchment area Surrogate for flow
volume
A
C
B
E
D
F
G
H
20Data for Geostatistical Modeling
- Distance matrices
- SLD, AHD
- Spatial weights matrix
- Contains flow dependent weights for WAHD
- Watershed covariates
- Lumped watershed covariates
- Mean elevation, Urban
- Observations
- MBSS survey sites
21Geostatistical Modeling Methods
- Fit the correlation matrix for SLD and WAHD
models - Maximized profile-log likelihood function
- Estimate model parameters
- Comparison within model set
- Spatial AICC
- Comparison between model set
- Universal kriging
- MSPE
22SLD Mariah Model
r2 Observed vs. Predicted values
- 1 influential site
- r2 without site 0.66
23Spatial Patterns in Model Fit
24Generate Model Predictions
- Prediction sites
- Study area
- 1st, 2nd, and 3rd order non-tidal streams
- 3083 segments 5973 stream km
- ID downstream node of each segment
- Create prediction site
- Generate predictions and prediction variances
- SLD Mariah model
- Universal kriging algorithm
25DOC Predictions (mg/l)
26Weak Model Fit
27Strong Model Fit
28Implications for Anadromous Fish Conservation
- Apply this methodology to salmon or salmon
habitat -
- Identify habitat conditions necessary for
spawning, rearing, or migration of anadromous
fish - Based on ecological biological knowledge
- Identify watershed conditions that may influence
those conditions - Watershed geology type substrate type
- Derive watershed characteristics using GIS/remote
sensing - Generate predictions and estimates of uncertainty
for potential salmon habitat - Categorize predictions into low, medium, or high
status - Probability of supporting anadromous fish
29Implications for Anadromous Fish Conservation
- Tradeoff between cost-efficiency and model
accuracy - One model can be used throughout a large region
- Regions may be ecologically unique
- May need to generate separate models for AWC
regions
- Allocate scarce sampling resources efficiently
- Target areas with a high probability of
supporting anadromous fish - Identify areas where more information would be
useful
30Implications for Anadromous Fish Conservation
- Advantages of GIS
- Identify spatial patterns in model fit
- Evaluate habitat at multiple scales
- Feature scale and regional scale
- Help prioritize fish habitat restoration
- Help prioritize land/conservation easement
acquisitions - Easily communicate with community, environmental,
and government groups
31Questions? Comments?
Erin E. Peterson Phone 61 7 3214 2914 Email
Erin.Peterson_at_csiro.au