* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download Theobald.etal.EPA.WED.2005
Survey
Document related concepts
Transcript
A framework to develop useful landscape indicators for measuring aquatic responses David Theobald, John Norman, Erin Poston, Silvio Ferraz Natural Resource Ecology Lab Dept of Recreation & Tourism Colorado State University Fort Collins, CO 80523 USA 2 February 2005 Project context Challenges of STARMAP (EPA STAR): Addressing science needs Clean Water Act Integrate science with states/tribes needs From correlation to causation Tenable hypotheses generated using understanding of ecological processes Goal: to find measures that more closely represent our understanding of how ecological processes are operating Typology of Landscape Context for Aquatic Response Indicators Sample/site 1. a. b. covariate at x,y location (e.g., geology, elevation, population density) covariate nearby x,y location (e.g., housing density at multiple scales) Watershed-based 2. a. Summary or average of covariates within watershed defined from “pourpoint on up”. “lumped”, overlapping, hierarchical, Spatial relationships between locations 3. a. b. Euclidean (as the crow flies) distance between points Euclidean (as the fish swims) hydrologic network distance between points Functional connectivity between locations 4. a. b. c. d. Direction of important ecological process (e.g., flow direction) Scale dependent Distances not symmetric, stationary violate traditional geostatistical assumptions!? From watersheds to tessellation of Reach Contributing Areas (RCAs): local vs. Amount of contributing area, flow volume, etc. From watersheds/catchments as hierarchical, overlapping regions… River continuum concept (Vannote et al. 1980) “Lumped” or watershed-based analyses % agricultural, % urban (e.g., ATtILA) Average road density (Bolstad and Swank) Dam density (Moyle and Randall 1998) Road length w/in riparian zone (Arya 1999) But ~45% of HUCs are not watersheds EPA. 1997. An ecological assessment of the US Mid-Atlantic Region: A landscape atlas. Southern Rockies Ecosystem Project. 2000. Benda et al. BioScience 2004 Dominant downstream process Upper and lower Colorado Basin Flows to downstream HUCs … to Tessellation of Reach Contributing Areas (RCAs) Automated delineation Inputs: stream network (from USGS NHD 1:100K) topography (USGS NED, 30 m or 90 m) Process: “Grow” contributing area away from reach segment until ridgeline Uses WATERSHED command “true” “adjoint” catchments catchments Reaches (segments) Reaches are linked to catchments 1 to 1 relationship Properties of the watershed can be linked to network for accumulation operation RCA example US ERF1.2 & 1 km DEM: 60,833 RCAs Hydrologic distance: -Instream -Up vs. down? FLOWS Overlapping watersheds Accumulate downstream FLOWS (and SPARROW) Stand-alone watershed Watershed-based analyses (HUCs) Tesselation of true, adjoint catchments ? Zonal Accumulate Process/Functional Up/down (network) Land (basins) Stream Watersheds HUCs/WBD Reach Contributing Areas (RCAs) Grain (Resolution) Challenges: conceptual & practical Definition of a watershed Overland surface process vs. in-stream flow process Scale/resolution issues Artifacts in data Attribute errors, flow direction, braided streams Linking locations/points/events to stream network E.g., different answers at 1:500K vs. 1:100K vs. 1:24K Reach-indexing gauges, dams? Very large databases GIS technology innovations and changes Asymmetric Kriging for Stream Networks Developed by Jay Ver Hoef, Alaska Department of Fish and Game (Ver Hoef, Peterson, and Theobald, In press) Spatial statistical models for stream networks Moving average models Incorporate flow and use hydrologic distance Represents discontinuity at confluences Important for pollution monitoring Flow Need for network datastructure within GIS Landscape Networks! Need to represent relationships between features Using graph theory, networks Retain tie to geometry of features Implementation in ArcGIS Geometric Networks (ESRI – complicated, slow) Landscape Networks (GeoNetworks): Open, simple, fast Feature to Feature Relationships via Relationship Table Up Down RCAs are linked together – but spatial configuration within an RCA? 1. Ignore variability 2. Buffer streams 3. Buffer outlet 2 major hydro. processes w/in RCA A B A' B' Legend C' C # 0 outlet nhd_rivers catch ^_ Points Distances AA' 0 0.5 1 2 Miles 1. Overland (hillslope): Distance (A to A’) 2. Instream flow: Distance (A’ to O) BB' CC' Flow distance: overland + instream Hydro-conditioned DEM (e.g., EDNA) FLOWDIRECTION FLOWLENGTH Flow distance: overland Hydro-conditioned DEM (e.g., EDNA) Burn stream into FLOWDIRECTION FLOWLENGTH Flow distance: instream Hydro-conditioned DEM (e.g., EDNA) FLOWDIRECTION FLOWLENGTH from outline – overland FLOWLENGTH Why are functional metrics important to understanding effects of land use change on freshwater systems? Clearer relationship between ecological (aquatic, terrestrial) process, potential effects (e.g., land use change) and response Huge (insurmountable?) challenge is that we cannot develop traditional experimental design (manipulated vs. controlled) because landscapes are so large and human activities so dominant More direct relationship between process and measure, biologically meaningful Tools needed to enable “network thinking” - FLOWS v0.1: ArcGIS v9 tools -Higher-level objects faster coding! - Open source - Integrated development for documentation Thanks! Comments? Questions? Funding/Disclaimer: The work reported here 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 the presenter and STARMAP, the Program (s)he represents. EPA does not endorse any products or commercial services mentioned in this presentation. STARMAP: FLOWS: [email protected] www.stat.colostate.edu/~nsu/starmap CR - 829095 Laramie Foothills Study Area and Sample Points Accessibility: travel time along roads from urban areas Planned future activities Papers Presentations Theobald GRTS Sept. 23 Poston Products Completing draft manuscripts on: GIS-GRTS, RCAs, overland/instream flow, dam fragmentation, GeoNetworks FLOWS tools Datasets: RCAs (ERF1.2) Education/outreach Training session for FLOWS tools Possible future activities Dataset development RCA nationwide with involvement for USGS NHD program Reach indexing dams (for EPA, Dewald) Discharge volume Symposium: “At the interface of GIS and statistics for ecological applications” (~January 2005) What are the strengths and weaknesses of GIS-based and statisticalbased tools? How can/should statisticians respond, direct, and utilize GIS-based types of tools? How can/should statistical tools be best integrated with GIS? What are the needs of agencies if statistical-based tools are to be used? When should GIS-based tools be used? How can these two approaches best complement one another? Landscape ecology and freshwater systems One consequence of this interplay [between pattern and process] is the form of functional connectivity found in a landscape. The landscape pattern-process linkage produces spatial dependencies in a variety of ecological phenomena, again mediated by organismal traits. All of the components of this framework change with changes in scale, often in different ways. It is through the integration of these features of landscapes and of organisms that landscape ecology can offer new insights to freshwater ecologists, fostering a closer linking of spatial patterns with ecological processes (Wiens 2002) Hierarchies Spatial heterogeneity Processes Overland Instream Functional connectivity Constraints Watershed to stream Reach to reach (stream network) Network Spatial & temporal scales, processes Poff, N.L. 1997