Landscape dynamics in the Southern Atlantic Coastal Plain in response to climate change, sea level rise and urban growth Todd S. Earnhardt, Biology Department, NCSU Alexa McKerrow, USGS-Biological Resources Discipline Adam Terando, Pennsylvania State University Matt Rubino, Biology Department, NCSU Steve Williams, Biology Department, NCSU August 5, 2010 Pittsburgh, PA Ecological Society of America
DSL Project Objectives Assess the current capability of habitats in ecoregions in the eastern United States to support sustainable bird populations Predict the impacts of landscape-level changes (e.g., from urban growth, conservation programs, climate change) on the future capability of these habitats to support bird populations Target conservation programs to effectively and efficiently achieve objectives in State Wildlife Action Plans and bird conservation plans and evaluate progress under these plans Enhance coordination among partners during the planning, implementation and evaluation of habitat conservation through conservation design The overall objective of this proposal is to develop a consistent methodology and to enhance the capacity of states, joint ventures and other partners to assess and design sustainable landscape conservation for birds and other wildlife in the eastern United States. Specifically… BaSIC/NCCoop is responsible for Obj. 1 & 2 as well as administering the project. This work supports a broader project that involves designing sustainable landscapes (DSL) with respect to migratory bird populations in the SE Coastal Plain. The overall goal of the DSL work is to develop a consistent methodology and to enhance the capacity of states, joint ventures and other partners to formulate conservation design schemes at landscape levels to sustain bird populations and other wildlife in the eastern United States.
Project Extent South Atlantic Migratory Bird Initiative (SAMBI) SE-GAP data set serves as the base dataset GAP data serves as a fundamental starting point for project
Output Summary ~ 2.5 million polygons prior to grid conversion 20 study areas based on Level IV ecoregions 291,757,276 pixels 262,581 km2 408 state class conditions 82 ecological systems 29 anthropogenic or “unprojectable” 3 SRES CO2 emission scenarios (a2, a1b, b1) 100 year simulation with decadal output
Modeling Landscape Change Existing Landscape Conditions Succession & Disturbance Models Range of Future Landscape Conditions (+25, +50, +75, +100 yrs) Global Climate Models Overview Urban Growth Models
Vegetation Dynamics Models VDDT State transition models Succession Disturbance Model controls State transition probabilities Management activities Forcing scenarios Trend patterns TELSA Spatial simulations Polygon based VDDT and Telsa
Vegetation modeling inputs Deterministic and Probabilistic transitions (from VDDT) Cover Type (e.g., Upland Longleaf pine) Canopy Structure (open, closed) Stage (early, mid, late) Age from FIA distribution Temporal and trend disturbance multipliers, polygon forcing (urban growth), etc.
Sequence of slides showing objects, land cover and structure characterization. How we get the polygons.
How do Global Climate Model variables relate to landscape changes? Temperature Precipitation Sea Level Rise Evapotranspiration Drought GCM “a2” scenario: -“business as usual” emission scenario (900 ppm CO2) Fire Frequency Disease Insect Outbreak Habitat Loss & Shifts in Habitat 3 Scenarios: A2, A1B, B2
Projected Fire Changes A2 Weighted Mean A1b Weighted Mean B1 Weighted Mean Hindcast Weighted Mean The results of the fire model where we developed relationships between climate variables and the number of acres burned in the SAMBI region. Once the relationships are developed we apply them to the Global Climate Model (GCM) output to project the changes in acres burned in the SAMBI region by 2100. About 15 climate models were used. We develop the ‘best’ prediction by calculating a weighted mean of all GCMs for each emissions scenario (the dashed lines and the solid black line). The black line is the weighted GCM mean of the ‘hindcasted’ acres burned. The solid colored lines are the smoothed versions of the projected acres burned. The smoothed versions are what we input into the landscape model to predict changes in the fire probability. So for instance notice that the smoothed line from the A2 scenario shows roughly 50% more acres burned in year 2100 compared to 2000. So when we run the landscape change model, by year 2100, it will assume a 50% higher probability of fire each year across the SAMBI region.
Incorporating probability multipliers Trend multipliers for fire in TELSA
Urban Growth Model Gigalopolis - SLEUTH Slope, Land Cover, Exclusion, Urbanization, Transportation, & Hillshade http://www.ncgia.ucsb.edu/projects/gig/v2/About/dtInput.htm#slope Slope (%) – is a resistance parameter (0 – 100 %) Land Cover – Land cover has different transition probabilities (categorical) Excluded – Public ownership probability that it could be developed (0-100%) Urban – Initial urban extent at the start of the modeling (urban/non-urban) Transportation – can be binary, road/non-road or have relative weighting based on accessibility Hillshade – just for looks, gives a backdrop for the build out scenarios – and makes SLEUT sound better.
Distribution of Atlantic CP Upland Longleaf Pine in SAMBI region
Summary Have a consistent method for modeling and mapping vegetation dynamics into the future Vegetation models can be adapted to reflect predicted responses to climate change Completed land cover mapping for SAMBI region out to 2100 and currently using this data for predicted species distribution modeling Predicted habitat maps are being used in DSL work at Auburn University (Moody, COS-111-4)
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