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Colorado State University s EPA-FUNDED PROGRAM ON SPACE-TIME AQUATIC RESOURCE MODELING and ANALYSIS PROGRAM (STARMAP) Jennifer A. Hoeting and N. Scott Urquhart – PowerPoint PPT presentation

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Title: Colorado State University


1
Colorado State Universitys EPA-FUNDED PROGRAM
ONSPACE-TIME AQUATIC RESOURCEMODELING and
ANALYSIS PROGRAM (STARMAP)
  • Jennifer A. Hoeting and N. Scott Urquhart
  • Associate Professor and Senior Research Scientist
  • Department of Statistics
  • Colorado State University
  • Fort Collins, CO 80523-1877

2
STARMAP FUNDINGSpace-Time Aquatic Resources
Modeling and Analysis Program
  • 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 presenters and STARMAP, the Program they
    represent. EPA does not endorse any products or
    commercial services mentioned in these
    presentation.

3
Overview of Presentation
  • EPAs Request for Applications (RFA)
  • CSUs Response STARMAP
  • A summary of some of the goals and recent
    accomplishments of the four STARMAP projects
  • Opportunities for Cooperation

4
EPAs REQUEST FOR APPLICATIONS(RFA)
  • Content Requirements
  • Research in Statistics
  • Directed toward using, in part, data gathered by
    probability surveys of the EMAP-sort.
  • Training of future generations of
    environmental statisticians
  • Outreach to the states and tribes

5
EPAs REQUEST FOR APPLICATIONS(RFA) - continued
  • Major Administrative Requirement
  • each of the two programs established will
    involve collaborative research at multiple,
    geographically diverse sites.
  • Two Programs
  • Oregon State University
  • Design-based/model assisted survey methodology
  • Colorado State University
  • Spatial and temporal modeling, incorporating
    hierarchical survey design, data analysis,
    modeling

6
RESPONSE to RFA from CSU
  • Institutions
  • Colorado State University
  • Department of Statistics
  • Natural Resources Ecology Lab
  • Oregon State University
  • Including work at
  • Iowa State University
  • University of Alaska, Fairbanks
  • University of Washington
  • Southern California Coastal Water Research
    Project (SCCWRP)
  • Water Quality Technology, Inc

7
STARMAP Overview
  • Goals of STARMAP
  • Develop statistical methods for aquatic resources
  • Extend current methods for sampling design and
    modeling
  • Emphasize spatio-temporal data spatially
    explicit data collected over time

8
STARMAP Overview
  • Most statistical techniques taught in graduate
    statistics classes assume that the observations
    are uncorrelated
  • Reality aquatic resources that are nearby in
    space are typically more similar than those far
    apart
  • STARMAP aims to
  • Develop sampling methods to enhance EMAP designs
  • Develop statistical methods which make the best
    use of the all available current data

9
STARMAPTypes of available data
  • A response of interest
  • A probability sample in a region, e.g., 305(b)
  • Some purposefully chosen points in the region
  • Spatially intensive points near some of the
    observation locations
  • Response may be multivariate
  • Predictors
  • Some at observation locations only
  • Some at whatever density desired from GIS

10
STARMAP PROJECTS
  • Combining Environmental Data Sets
  • 2. Local Estimation
  • Indicator Development
  • Outreach

11
STARMAP PROJECT 1 COMBINING ENVIRONMENTAL DATA
SETS
  • Project leader Jennifer Hoeting,
  • CSU Department of Statistics
  • Two of the goals of the project
  • Develop models and methodology for modeling
    aquatic resource data
  • Enhance EMAP designs

12
STARMAP PROJECT 1 A closer look at one of the
projects
  • Goal 1 Develop models and methodology for
    modeling aquatic resource data
  • Challenges
  • Spatially explicit, but incomplete coverage over
    space
  • Form of the response
  • Example Compositional data
  • What proportion of the species of fish at a
    sample location are in three pollution (or
    thermal) tolerance categories intolerant,
    intermediate, and tolerant?
  • Can we relate multiple compositions to
    environmental covariates in a scientifically
    meaningful way?

13
Modeling compositional dataMotivating Problem
  • Stream sites in the Mid-Atlantic region of the
    United States were visited
  • Response For each site, each observed fish
    species was cross categorized according to
    several traits
  • Predictors Environmental variables are also
    measured at each site (e.g. precipitation,
    chloride concentration,)
  • How can we determine if collected environmental
    variables affect species trait compositions
    (which ones)?

14
Modeling compositional dataSampling locations
for Mid-Atlantic Highlands Region
15
Modeling compositional dataDiscrete
Compositions and Probability Models
  • Compositional data are multivariate observations
  • Z (Z1,,ZD) subject to the constraints that
    SiZi 1 and Zi ? 0.
  • Compositional data are usually modeled with the
    Logistic-Normal distribution (Aitchison 1986).
  • LN model defined for positive compositions only,
    Zi gt 0
  • Problem With discrete counts one has a
    non-trivial probability of observing 0
    individuals in a particular category

16
Modeling compositional dataRandom effects
discrete regression model
  • Developed a new model the random effects
    discrete regression model
  • Developed Bayesian methods to estimate the
    parameters of this model
  • Developed graphical models theory which allows
    for statistically sound displays of the results

17
Modeling compositional dataRandom effects
discrete regression model
  • Sampling of individuals occurs at many different
    random sites, i 1,,S, where covariates are
    measured only once per site
  • Hierarchical model for individual probabilities

18
Modeling compositional data Example Chain Graph
b
a
c
d
e
  • Mathematical graphs are used to illustrate
    complex dependence relationships in a
    multivariate distribution
  • A random vector is represented as a set of
    vertices, V .
  • Pairs of vertices are connected by directed or
    undirected edges depending on the nature of each
    pairs association

19
Modeling compositional data Fish Species
Richness in the Mid-Atlantic Highlands
  • 91 stream sites in the Mid Atlantic region of the
    United States were visited in an EPA EMAP study
  • Response composition Observed fish species were
    cross-categorized according to 2 discrete
    variables
  • Pollution tolerance
  • Intolerant
  • Intermediate
  • Tolerant
  • Habit
  • Column species
  • Benthic species

20
Modeling compositional data Stream Covariates
  • Environmental covariates values were measured at
    each site for the following covariates
  • Mean watershed precipitation (m)
  • Minimum watershed elevation (m)
  • Turbidity (ln NTU)
  • Chloride concentration (ln meq/L)
  • Sulfate concentration (ln meq/L)
  • Watershed area (ln km2)

21
Modeling compositional data Fish Species
Functional Groups
Posterior suggested chain graph for independence
model (lowest DIC model)
  • Edge exclusion determined from 95 HPD intervals
    for b parameters and off-diagonal elements of ?Ø.

22
Modeling compositional dataA summary
  • The Random Effects Discrete Regression Model
  • Allows for multivariate composition response
  • Provides a statistically defensible graphical
    model interpretation
  • Offers measures of uncertainty and inferences not
    available using other techniques for species
    trait and related analyses
  • Allows for predictions at unobserved locations

23
STARMAP PROJECT 1 Some Recent Accomplishments
  • Goal 1 Develop models and methodology for
    modeling aquatic resource data
  • Other projects aimed at goal 1
  • Models for radio telemetry habitat association
    data
  • Radio-tagged fish are monitored over time
  • Goal extend existing models to account for
    seasonal changes in fish habitat types
  • Model selection for geo-statistical models
  • When predicting a continuous response , which
    covariates are best?
  • Does spatial correlation affect model selection
    (YES!)

24
STARMAP PROJECT 1 Some Recent Accomplishments
  • Goal 2 Enhance EMAP designs
  • How should EMAP-type sampling be intensified to
    estimate spatial correlation?
  • Current context City of San Diego and Southern
    California Coastal Water Research Project
    (SCCWRP)
  • Accurate maps of environmental measures around
    San Diegos oceanic sewage outfall
  • How to Get From 305(b) Survey Results to Identify
    303(d) Sites?
  • STARMAP organized a morning of talks on this
    topic at the recent EMAP Conference

25
STARMAP PROJECT 2 Local Inferences from
Aquatic Studies
  • Project leader Jay Breidt,
  • CSU Department of Statistics
  • Goals
  • Develop techniques for small area estimation
  • Develop methods to estimate the cumulative
    distribution function
  • Methods to infer causality from non-experimental
    spatially referenced data

26
STARMAP PROJECT 2 Some Recent Accomplishments
  • Goal 1 Small area estimation
  • Combining probability survey data with
    non-probability data to make spatially-explicit
    predictions
  • Bayesian models to construct a set of ensemble
    estimates to predict some response
  • Data not observed everywhere, but methods will
    provide predictions over entire region along with
    estimates of uncertainty
  • Current emphasis characteristics of water
    quality for Mid-Atlantic Highlands region

27
STARMAP PROJECT 2 Some Recent Accomplishments
  • Goal 1 Developing and comparing different
    methods for small area estimation
  • Developing new semi-parametric methods
  • Compared to parametric and non-parametric
    methods, can optimize over the benefits of both
  • Goal 2 Nonparametric regression estimators for
    two-stage samples
  • Incorporates auxiliary information available at
    the level of the primary sampling unit
  • Current emphasis EMAP Northeast Lakes
  • Presented results at recent EMAP conference

28
STARMAP PROJECT 3 Development and Evaluation
of Aquatic Indicators
  • Project leader Dave Theobald,
  • CSU Natural Resources Ecology Lab
  • Two of the project goals
  • Develop and determine landscape indicators for
    analyses of EMAP data
  • Develop better GIS tools for relevant agencies

29
STARMAP PROJECT 3 Some Recent Accomplishments
  • Goal 1 Develop and determine landscape
    indicators for analyses of EMAP data
  • Developing predictors for stream size and flow
    status to overcome limitations of the National
    Hydrological Database
  • Classification of perennial versus non-perennial
    streams
  • Estimation of regional indicators of taxa
    richness
  • Quantifying taxa richness in terms of rarity
    assessed by a fixed count
  • Sampling macroinvertebrates compositing and
    structure of variance
  • Compiling indicators and additional GIS data
    coverage for MAHA and Western Pilot Study

30
STARMAP PROJECT 3 Some Recent Accomplishments
  • Goals 2 Develop better GIS tools
  • Software for Generalized Random Tessellation
    Stratified (GRTS) sampling
  • GRTS Robust spatially balanced random sampling
  • Software implements the GRTS algorithm in ARCVIEW
  • Software is in final testing stages

31
Laramie Foothills Study Area and Sample Points
32
Photo interpretation points displayed with
predicted current condition map
33
STARMAP PROJECT 4 OUTREACH
  • Project leader Scott Urquhart,
  • CSU Department of Statistics
  • Project goals
  • Identify and establish statistical needs of
    states, tribes and local agencies
  • Prepare content material relevant to target
    audience

34
STARMAP PROJECT 4 Outreach
  • Learning Materials for Aquatic Monitoring
  • Individualized interface
  • Images can vary by geographic context
  • Content varies by responsibility level
  • Supports language variation
  • Browser based
  • Also available on a CD ROM
  • Avoid internet delays for learners at remote
    sites in the field
  • Customizable environment
  • Materials are under active development
  • Interface initial materials tested late last
    summer by monitoring personnel in state agencies,
    Region 10 and NGOs
  • Anticipate video taping of EMAP training session
    in Corvallis later this month material to be
    included in How to Monitor
  • See poster and reprint for more info

35
STARMAP PROJECT 4 Recent Accomplishments
  • Content
  • Monitoring Objectives
  • Methods for Site Selection
  • What/How to Monitor
  • How to Monitor Field Operations
  • How to Summarize
  • Case Studies
  • Planning studies
  • Site selection
  • Analyses

36
STARMAPTraining future environmental
statisticians
  • Graduate students graduated
  • 1 Ph.D. 1 affiliated student in landscape
    ecology
  • 4 M.S.
  • Current graduate students
  • 6 Ph.D. students including two in landscape
    ecology
  • 2 M.S. students
  • Post doctoral fellows one at present seeking
    others
  • Early career professionals
  • 3 young faculty
  • 2 agency employees

37
STARMAPTraining future environmental
statisticians
  • Colorado State Universitys PRIMES program
  • PRogram for Interdisciplinary Mathematics,
    Ecology and Statistics,
  • NSF IGERT program aimed at training graduate
    students in this interdisciplinary area
  • Works well with STARMAP as both have similar
    goals
  • Allows us to offer new classes and support
    students in many ways
  • Opportunities for visitors and joint research!

38
OPPORTUNITIES FOR COOPERATION
  • GIS-based GRTS site selection
  • New analysis needs
  • We are looking for aquatic environmental data
    sets
  • Which are spatially intense
  • Like at sites 100s of meters apart to few km
  • Or which include spatial locations and were
    collected over a long time frame (gt 5 time
    points)
  • Identified several such possible sets at EMAP
    Conference
  • Involvement in Evolving Learning Materials
  • Testing
  • Suggestions
  • Case studies
  • We could analyze some data for you to make these

39
CHECK OUT WHAT WE ARE DOING
  • STARMAP Web Site
  • http//www.stat.colostate.edu/starmap/
  • This presentation will be posted there, soon.
  • Team members here are
  • Questions Are Welcome!
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