Eco-Logical Webinar: Improving Aquatic Connectivity at the Landscape Scale
    in the Southeastern United States
October 13, 2016
Table of Contents
Eco-Logical and Aquatic Connectivity
Project Information
Prioritizing Aquatic Connectivity: Implementation and Applications
Conclusion
Eco-Logical and Aquatic Connectivity
Slide 1: Improving Aquatic Connectivity at the Landscape Scale in the Southeastern United States
    October 13, 2016
    Presenters:
        Mike Ruth, Federal Highway Administration, Office of Project Development and Environmental Review
        Duncan Elkins and Nate Nibbelink, University of Georgia
        Evan Collins, U.S. Fish and Wildlife Service
        Thomas Prebyl, University of Georgia
    Learn more about Eco-Logical at the FHWA website
    Images: Volpe, The National Transportation Systems Center logo and the U.S. Department of Transportation's Federal Highway Administration logo
        Image: Collage of colored photographs of a bridge, a deer, a fish, and a curved rural road from the cover of the Eco-Logical: An Ecosystem Approach to Developing Infrastructure Projects report
 
Slide 2: Steps to Ensure Optimal Webinar Connection
    This webinar broadcasts audio over the phone line and through the web room, which can strain some internet connections. To prevent audio skipping or webinar delay we recommend participants:
    
        - Close all background programs
- Use a wired internet connection, if possible
- Do not use a Virtual Private Network (VPN), if possible
- Mute webroom audio (toggle is located at the top of webroom screen) and use phone audio only
 
Slide 3: What is Eco-Logical?
    
        - An ecosystem methodology for planning and developing infrastructure projects
- Developed by eight Federal agency partners and four State DOTs
- Collaboration between transportation, resource, and regulatory agencies to integrate their plans and identify environmental priorities across an ecosystem
Images: Logos of the following U.S. agencies: Bureau of Land Management (BLM), Environmental Protection Agency (EPA), Department of Transportation (DOT), National Oceanic and Atmospheric Administration (NOAA), National Park Service (NPS), Army Corps of Engineers (USACE), Department of Agriculture (USDA), Forest Service (USFS), and Fish and Wildlife Service (FWS).
 
Slide 4: Aquatic Connectivity
    
        - Roadways have direct and indirect effects on wildlife
- Improving connectivity for aquatic organisms a key goal of improved infrastructure planning
- Most previous work focused on terrestrial connectivity
 
Slide 5: How Aquatic Connectivity tool fits into Eco-Logical
    
        - Helps different agencies understand importance of connectivity from the outset of the planning process
- Communication tool for engaging stakeholders in discussing barriers to wildlife movement
Image: Photo of a flock of pelicans standing in a wetland
 
Slide 6: How Aquatic Connectivity tool fits into Eco-Logical
    
        - Mapping Tools key to characterizing resources in preparation for developing Regional Ecosystem Framework (REF)
- Helps identify existing concerns for aquatic species
- Helps identify past impacts at critical locations
Image: Photo of hikers at the edge of a pond, high up in the mountains
 
Slide 7: How Aquatic Connectivity tool fits into Eco-Logical
    
        - Creating Regional Ecosystem Framework (REF) requires collecting geospatial data on resources and transportation plans
- Creating Planning Scenarios to define footprint of potential projects
Image: Photo of a beach edged by pine trees
 
Slide 8: Improving Aquatic Connectivity at the Landscape Scale in the Southeastern United States
    October 13, 2016
    Presenters:
        Mike Ruth, Federal Highway Administration, Office of Project Development and Environmental Review
        Duncan Elkins and Nate Nibbelink, University of Georgia
        Evan Collins, U.S. Fish and Wildlife Service
        Thomas Prebyl, University of Georgia
    Learn more about Eco-Logical at the FHWA website
    Images: Volpe, The National Transportation Systems Center logo and the U.S. Department of Transportation's Federal Highway Administration logo
        Image: Collage of colored photographs of a bridge, a deer, a fish, and a curved rural road from the cover of the Eco-Logical: An Ecosystem Approach to Developing Infrastructure Projects report
 
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Project Information
Slide 9: Project Background
    
        - ~2010, Regional connectivity analyses focused on Dams
- 2011 SARP-funded assessment of culvert studies in Southeast
- Summer 2012, FHWA project: Predicting barrier presence and passabilityat road/stream xings
- Summer 2013, SA-LCC project: Expanded region, more GIS tools
 
Slide 10: Predicting Culvert Passability in Three Southern Watersheds
    Image: Photo of a two-person crew taking culvert measurements under a bridge
        Image: Photo of a circular culvert
 
Slide 11: Diversity
    Freshwater fish account for ≈25% of all vertebrate diversity
    Image: Global map that is color-coded to indicate levels of freshwater fish species per ecoregion area
 
Slide 12: Fish Diversity in the Continental U.S.
    Image: Map of the continental U.S., labeled “Freshwater Fish Richness/863 spp,” color-coded on a scale of 2 to 238
        Image: Map of the continental U.S., labeled “Endemism/591 spp,” color-coded on a scale of 1 to 77
 
Slide 13: Imperilment
    Key Threats
    
        - Habitat degradation
- Water pollution
- Overexploitation
- Invasive speciess
Image: Map of North America, color-coded to indicate the number of imperiled taxa in ecoregion
 
Slide 14: Connectivity
    
        - Hydrologic connectivity - “water-mediated transfer of matter, energy, and/or organisms between elements of the hydrologic cycle”
- Longitudinal
- Lateral
- Vertical
Image: Photo of a cascading waterfall in a lush forest
        Image: Map showing aquatic connectivity in the study region
 
Slide 15: Fragmentation
    Dams
    
        - Barriers
            
                - Animal movement
- Nutrient and Sediment transport
 
- Fragment/alter habitat
Image: Aerial photo of a large dam and the wetland above it
        Image: Map showing aquatic connectivity in the study region
 
Slide 16: Fragmentation
    
        - Barriers
            
                - Animal movement
- Nutrient and Sediment transport
 
- Fragment/alter habitat
- Growing knowledge of their location
Image: Aerial photo of a large dam and the wetland above it
        Image: Map showing aquatic connectivity in the study region marked with numerous black boxes representing dams that fragment connectivity
 
Slide 17: Fragmentation
    Road Crossings
    
        - Fragment habitat
- Obstruct fish movement
- Passability variability
Image: Photo of two very small culvert openings
        Image: Map showing aquatic connectivity in the study region marked with numerous black boxes representing road crossings that fragment connectivity
 
Slide 18: Projected Growth
    Image: Map of the southeastern continental U.S., marked and labeled “SLEUTH urbanization potential, 2020-2070, by Clarke and Doato, salcc.databasin.org”
 
Slide 19: Passability
    
        - Attributed to the structure
- Needs to be discussed in terms of a species or group of species
Image: Two photos of fish spawning upstream over a low dam
        Image: Photo of a swarm of eels traveling down a river
 
Slide 20: Southeastern Fishes
    Images: Photos of eleven southeastern fishes
 
Slide 21: The Good
    Images: Three photos of field workers measuring the water depth of three different culverts
 
Slide 22: The Bad
    Images: Three photos of field workers measuring the water depth of three different culverts
 
Slide 23: The Ugly
    Images: Two photos of field workers measuring the water depth of three different culverts (there are two culverts side-by-side in one of the photos)
 
Slide 24: Objectives
    
        - Can we use spatial modeling to predict impassable or problematic structures on the ground?
Image: Flowchart showing two inputs (“Landscape Gradients” and “Classification Method”) as inputs to “Build Predictive Models,” which then feeds into “Use Predictions to understand cumulative effects of culverts”
 
Slide 25: Study Area
    
        - Three watersheds that reflect the geographic diversity of the Southeast
- Sites of previous connectivity studies
Image: Map showing three watersheds: one straddles Tennessee and North Carolina, one is in northern Georgia, and the third is in the Florida Panhandle and extends north into Alabama
 
Slide 26: Survey Site Selection
    
        - Upstream catchment area attributed with land cover types, uses, and ownership
- Only sites with an upstream catchment area <60 km2 were selected
Image: Map that shows the cluster analysis stream line of the upstream catchment area
 
Slide 27: Bridges
    60 km2?
    Images: Two photos of bridges over small rivers
 
Slide 28: Bridge Threshold
    
        - 95% of all culverts cross a stream with a watershed < 60 km2
- 95% of bridges cross a stream with a watershed area of <84 km2
Image: Vertical bar graph that shows that bridges outnumber culverts in the watershed area by about five to one
 
Slide 29: (No title)
    Image: Map of the watershed area that straddles Tennessee and North Carolina, marked with many green circles
 
Slide 30: (No title)
    Image: Map of the watershed area in northern Georgia, marked with many green circles
 
Slide 31: (No title)
    Image: Map of the watershed area that straddles the Florida Panhandle and Alabama, marked with many green circles
 
Slide 32: Field Surveys
    June 2013 - February 2014
    
        - Perch Height
            
        
- Culvert Length
- Culvert Slope
- Sediment in Culvert
- Scour pool presence
Image: Photo of two field workers taking measurements of two culverts
 
Slide 33: (No title)
    Image: Diagram of a cross section of a culvert under a road, with the following elements labeled: road surface, culvert channel bottom, culvert inlet P1, culvert outlet P2, outlet perch, water surface, and tailwater control P3
 
Slide 34: Passability Classification
    
        - Passabilityin terms of three families
            
                - Percidae
- Cyprinidae
- Salmonidae
 
Image: Three photos of three fish
 
Slide 35: Field Data Summary
    
        - 52% pipe culverts
- 16% bridges
- 14% box culverts
Image: Vertical bar graph of the Road Crossing Structure Types for Chipola, Etowah, and Nolichucky shows that Circular Culvert is by far the most prevalent, followed by Bridge and Box Culvert, and then No Structure, No Access, Bottomless Box Culvert, and Other
 
Slide 36: Field Data Summary
    
        - Mostly passable for all families
- 7 indeterminate culverts (removed from analysis)
- 35 dry crossings (removed from analysis)
Image: Vertical bar graph of the Field Data Summary for Percidae, Cyprindae, and Salmonidae shows that the Salmonidae passes the highest through both passable and impassible watersheds, followed by Cyprindae and then Percidae
 
Slide 37: Landscape Gradients
    
        - Landscape characteristics around in the upstream catchment area of a culvert and within a 100 m buffer are likely to influence erosional processes
- Increased erosion at a culvert will cause more scour and increase the perch height of a culvert and prevent a fish from entry
        - Percent land cover type
- Percent impervious surface
- Roughness
- Compound topographic index
- Stream power
- Slope position of culvert
- Stream reach gradient
- Road type
- Flow accumulation
- Upstream catchment area
- Discharge for a 5 year flood
 
Slide 38: Model Performance
    
        
            | Family Specific Model | Parameters | AUC | 
        
            | Percidae | Mean Roughness (WS), % Impervious (WS), Stream Power, % Forest (WS), Mean Roughness (BF), Watershed Area, % Impervious (BF), % Shrub/Scrub (WS), % Grassland (WS), % Pasture (BF), % Woody Wetland (WS), % Cultivated Crops (WS), % Open Water (WS), % Herbaceous Wetland (WS) | 0.614 | 
        
            | Cyprinidae | Mean Roughness (WS), Mean Roughness (BF), Slope Position, CTI, % Forest (WS), Watershed Area, % Impervious (BF), Stream Gradient, % Pasture (WS), % Shrub/Scrub (WS), % Grassland (WS), % Woody Wetland (WS), % Cultivated Crops, Road Type (FCode), % Open Water (WS), % Shrub/Scrub (BF), % Herbaceous Wetland (BF) | 0.642 | 
        
            | Salmonidae | Slope Position, % Forest (WS), Watershed Area, Mean Roughness (BF), % Impervious (WS), % Impervious (BF), Mean Roughness (WS), Stream Gradient, ), % Shrub/Scrub (WS), % Grassland (WS), % Pasture (BF), % Woody Wetland (WS), % Cultivated Crops, Watershed | 0.655 | 
    
 
Slide 39: Nolichucky Mean Impassability per HUC 10
    Image: Map showing mean impassability per HUC 10 in the Study Area, ranging from 0.510 to 0.588
 
Slide 40: Chipola Mean Impassability per HUC 10
    Image: Map showing Chipola mean impassability per HUC 10 in the Study Area, ranging from 0.387 to 0.319
 
Slide 41: Etowah Mean Impassability per HUC 10
    Image: Map showing Etowah mean impassability per HUC10 in the Study Area, ranging from 0.0551 to 0.346
 
Slide 42: Conclusions and Implications
    
        - Passability can be predicted with landscape characteristics
- Predictive modeling can help us gain a better understanding of where problems may occur
- Predictions can be used to guide prioritizations
Image: Photo of a work crew demolishing a short dam
 
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Prioritizing Aquatic Connectivity: Implementation and Applications
Slide 43: Prioritizing Aquatic Connectivity: Implementation and Applications
    Thomas Prebyl, Duncan Elkins, Evan Collins, Nathan Nibbelink
        University of Georgia Warnell School of Forestry and Natural Resources
    Image: Fluvial map showing obstructions to connectivity in the Study Area
        Images: Two photos of fish
 
Slide 44: Outline
    
        - Overview of prioritization problem
- General workflow and ArcGIS toolbox
- Application Examples
- Ongoing work
 
Slide 45: Overview
    
        - How do dams and culverts influence connectivity?
- Which barriers (if removed) would most benefit connectivity.
Image: Fluvial map showing dams and culverts in the study area
        Image: Photo of water rushing over a dam
        Image: Photo of three square culverts under a bridge
 
Slide 46: Workflow
    
        - Data Sources
- Data Preparation
- Network Simplification
- Prioritization Algorithms
- Visualizing Results
Image: Cartoon graphic of two toolboxes, one of which is open and contains a python. The image is labeled “Custom ArcGIS Toolbox | ‘Stream Network Tools.’”
 
Slide 47: Workflow: Data Sources
    
        - Streams
            
                - National Hydrology Dataset (USGS)
- NHDPlus Version 2 (Horizon Systems)
                    
                        - 1:100K but many value added attributes
 
 
- Dams
            
                - National Inventory of Dams (NID): US Army Corps of Engineers
- National Anthropogenic Barrier Dataset (NABD)
- GeoFIN(USFWS)
- NHD Dam Events (USGS)
- Various regional and state datasets (e.g. SARP)
 
- Roads
            
        
- Bridges
            
                - National Bridge Inventory (FHWA)
 
 
Slide 48: Workflow: Data Preparation
    
        - Intersect roads and streams to identify likely culverts
- Remove known bridges
            
        
- Snap dams to stream network
- Identify disjunct stream segments (tool)
Image: Fluvial map showing dams and culverts in the study area
        Image: Small version of the Python Toolbox image from Slide 46
 
Slide 49: Workflow: Network Simplification
    Image: Graphic showing two fluvial maps of the Study Area stream network. The input shows many colors representing different networks with an arrow to the output showing fewer colors, representing simplification
        Image: Small version of the Python Toolbox image from Slide 46
 
Slide 50: Workflow: Network Simplification
    Image: Fluvial map showing the stream network in the study area. Triangles dispersed throughout represent dams, circles dispersed throughout represent likely culverts. Different colors represent subnetwork length in kilometers. Most of the subnetwork length is less than 10km.
 
Slide 51: Workflow: Extract Adjacency
    Image: Graphic of the simplified stream network with an arrow to an output spreadsheet representing stream data
 
Slide 52: Workflow: Prioritize Removal
    How to prioritize barriers for removal?
    Image: Graphic of the stream network, with different colors representing the subnetworks, with triangles representing dams.
        Image: The dendritic connectivity index equation
 
Slide 53: Workflow: Prioritize Removal
    Computation Size:
        n = total # of barriers
        b = # to remove
    
        
            | b | n=300 | 
        
            | 1 | 300 | 
        
            | 2 | 44,850 | 
        
            | 3 | 4,455,100 | 
        
            | 4 | 330,791,175 | 
        
            | 5 | 1.95 x 1010 | 
    
         n!      
        b!(n-b)!
    Image: Fluvial map showing the stream network in the larger study area, with triangles representing barriers
 
Slide 54: Workflow: Prioritize Removal
    Computation Size:
        n = total # of barriers
        b = # to remove
    
        
            | b | n=300 | n=10000 | 
        
            | 1 | 300 | 10000 | 
        
            | 2 | 44,850 | 49,995,000 | 
        
            | 3 | 4,455,100 | 1.66 x 1010 | 
        
            | 4 | 330,791,175 | 4.16 x 1013 | 
        
            | 5 | 1.95 x 1010 | 8.35 x 1013 | 
    
         n!      
        b!(n-b)!
    Image: Fluvial map showing the stream network in the larger study area, with triangles representing barriers
 
Slide 55: Workflow: Prioritize Removal
    Use heuristics to limit search
    
        - Connect high-weight streams
- Identify paths where a large cumulative improvement to passability is possible
- Progressively expand search
            
                - Path, Neighborhood, Full Network
 
Image: Fluvial map showing the stream network in the larger study area, marked with circles representing barriers
        Images: Python and igraph logos
        Image: Python toolbox graphic from Slide 46
 
Slide 56: Workflow: Prioritize Removal
    Evaluation
    
        - Compared to exhaustive searches
- 300 node network
- Removing 3 barriers
- > 4 million possible combinations
Image: Graph of the downward sloping curve representing exhaustive and heuristic removal, which shows a decrease in dendritic connectivity index and an increase in combination rank
        Images: Python and igraph logos
        Image: Python toolbox graphic from Slide 46
 
Slide 57: Workflow: Visualizing Results
    Image: Chart showing results from the study
        Image: Fluvial map showing the stream network in the larger study area, with circles representing barriers: five circles are colored turquoise, representing priority removal sites
        Image: Python toolbox graphic from Slide 46
 
Slide 58: Applications
    DCI in the Etowah River Watershed
    Image: Vertical bar graph showing DCI for dams only at 90.877, maximum passability for DS pass 1 at 28.523, maximum passability at 16.555, median passability at 11.252, and minimum passability at 8.251
 
Slide 59: Applications
    Distribution of Fragment Lengths in the Etowah River Watershed
    Image: Vertical bar graph showing the distribution of fragment lengths in the Etowah River Watershed. Percent of total length is on the Y axis from 0-1.0 and fragment length in kilometers is on the x axis. The highest percentage for dams and culverts is between 0 and 10 km; the highest percentage for dams is greater than 500km. The lowest percentage for dams and dams and culverts is between 100 and 250 km.
 
Slide 60: Applications
    Evaluating Alternatives
    Image: Graph that shows evaluation of alternatives for Tallapoosa. The graph shows the relationship between barriers removed and percent increase in connectivity.
 
Slide 61: Applications
    Compare scenarios
    
        - Add Barriers
- Make barriers ‘un-removable’
- Alter passability assumptions
- Alter stream weight (habitat quality)
Image: Fluvial map showing the stream network in the larger study area
 
Slide 62: Ongoing Work
    South Atlantic LCC Report
    
        - Assessing the influence of road-stream crossings
Image: Pair of maps showing the assessment of influence of road-stream crossings in the South Atlantic LCC. Left map shows Anderson 3-level with half as 0.55 mean probability impassable. Right map shows Coffman Cyprinid with half showing 0.2 mean probability impassable.
 
Slide 63: Ongoing Work
    Web-application of aquatic connectivity tools
    
        - Partnership with CSU, UGA, UMASS, & Army COE
Image: Logo: eRAMS | Share your geographic perspective…
 
Slide 64: (Blank slide)
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Conclusion
Slide 65: How Aquatic Connectivity tool fits into Eco-Logical
    
        - Step 1: Build and strengthen collaborative partnerships and vision
            
                - Shared understanding of issues surrounding aquatic connectivity
 
- Step 2: Characterize resource status and integrate natural environment plans
            
                - Compile data and identify current conditions “such as stream crossings”
 
- Step 3: Create a regional ecosystem framework (conservation strategy + transportation plan)
            
                - Inform scenarios to help define footprint for proposed projects
 
Images: Three photos of forests and mountains
 
Slide 66: How Aquatic Connectivity tool fits into Eco-Logical
    
        - Step 4: Assess effects on conservation objectives
            
                - Help create a regional-scale picture of potential and cumulative impacts
- Scenarios can help identify and quantify mitigation needs
 
Image: Photo of a rushing stream in a forest
 
Slide 67: 
    
        - Step 4: Assess effects on conservation objectives
            
                - Help create a regional-scale picture of potential and cumulative impacts
- Scenarios can help identify and quantify mitigation needs
 
- Step 5: Establish and prioritize ecological actions
            
                - Tool can help prioritize conservation/restoration actions
- Spatial location and type of impacts can help identify potential lead agencies
 
Image: Photo of a rushing stream in a forest
        Image: Photo of a forested valley between forested mountains
 
Slide 68: 
    
        - Step 4: Assess effects on conservation objectives
            
                - Help create a regional-scale picture of potential and cumulative impacts
- Scenarios can help identify and quantify mitigation needs
 
- Step 5: Establish and prioritize ecological actions
            
                - Tool can help prioritize conservation/restoration actions
- Spatial location and type of impacts can help identify potential lead agencies
 
- Step 6: Develop crediting strategy
            
                - Identify measurements for mitigation goals - e.g. connectivity indices
- Help establish off site mitigation opportunities
 
Image: Photo of a rushing stream in a forest<
        Image: Photo of a forested valley between forested mountains
        Image: Close-up photo of a pine tree branch with forested mountains in the background
    
 
Slide 69: Q & A
    Presenters
    
        - Mike Ruth, Federal Highway Administration, Office of Project Development and Environmental Review
- Duncan Elkins, University of Georgia
- Evan Collins, U.S. Fish and Wildlife Service
- Thomas Prebyl, University of Georgia
- Nate Nibbelink, University of Georgia
Learn more about Eco-Logical at the FHWA website
    Image: Collage of colored photographs of a bridge, a deer, a fish, and a curved rural road from the cover of the Eco-Logical: An Ecosystem Approach to Developing Infrastructure Projects report
 
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