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Sea-level Rise Science and Decision Making in an Uncertain Future Rob Thieler U.S. Geological Survey Woods Hole, MA
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Thousands of 14 C years before present Rate of SLR (mm/yr) Global delta initiation (Stanley and Warne, 1994) U.S. Atlantic, U.K. wetland initiation; barrier island stability (Shennan and Horton, 2002; Engelhart et al., in press) mwp-Ia mwp-Ib (SLR rate based on Fairbanks, 1989) Sea-level rise rates since the Last Glacial Maximum
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Years before present Rate of SLR (mm/yr) “Geologic past” (Fairbanks, 1989; Horton et al. 2009) “Instrumental record” (Church and White, 2006) “Projections” (Rahmstorf, 2007) Past, present, and potential future rates of sea-level rise
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(modified after Rahmstorf, 2007; AR4 data from Bindoff, 2007) Historic and Projected Sea-level Rise IPCC AR4 A1B envelope There are now several projections that suggest ~80-150+ cm rise is possible over the next century
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Importance of Spatial Scale
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Short-term Variance (hours to decade) Storm impact/recovery Annual cycles El Niño Long-term Trend (decades to centuries) Sediment deficit or surplus Sea-level rise Importance of Temporal Scale
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U.S. Climate Change Science Program Synthesis and Assessment Product 4.1 Coastal Sensitivity to Sea-Level Rise: A Focus on the Mid-Atlantic Region
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Coastal Elevation Data Elevation is a critical factor in assessing potential impacts (specifically, inundation) Current elevation data do not provide the degree of confidence needed for quantitative assessments for local decision making Collection of high-quality elevation data (lidar) would be valuable (Gesch et al., 2009)
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Elevation source: 30-m DEMElevation source: 3-m lidar data Dark blue Land ≤ 1 meter elevation Light blue Area of uncertainty associated with 1 meter elevation Eastern North Carolina High quality elevation data reduce uncertainty of potentially inundated areas (Gesch et al., 2009)
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Mid-Atlantic Assessment of Potential Dynamic Coastal Responses to Sea-level Rise Bluff erosion Overwash Island Breaching Threshold Crossing (Gutierrez et al., 2009)
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Monitor Modern Processes and Environments Learn from the Past Support Decision Making Improve Understanding of Societal Impacts Improve Predictive Capability Science strategy to address the challenge of climate change and sea-level rise (Thieler et al., 2009)
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The end of “Climate Stationarity” requires that organizations and individuals alter their standard practices and decision routines to take climate change into account. Scientific priorities and practices need to change so that the scientific community can provide better support to decision makers in managing emerging climate risks. Decision makers must expect to be surprised because of the nature of climate change and the incompleteness of scientific understanding of its consequences. An uncertainty management framework should be used because of the inadequacies of predictive capability. Informing Decisions in a Changing Climate National Research Council (2009)
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A conceptual approach to the multivariate, uncertainty problem Explicitly include uncertainties, as well as management application
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Step 1. design a network Driving Forces Geologic Constraints Coastal Response Tide Range Wave Height Relative Sea-level Rise Coastal Slope Geomorphology Shoreline Change (Gutierrez et al., 2011)
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Step 2. train a network Input Data: Coastal Vulnerability Index (Thieler and Hammar-Klose, 1999) Utilized existing data for six geological and physical process variables Geomorphology Coastal slope Relative sea-level rise rate Mean sig. wave height Mean tidal range Historic shoreline change rate learn correlations (Gutierrez et al., 2011)
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Step 3. Make predictions For average long-term SLR (2 mm/yr): No-change is most likely Prob. (Erosion < -1 m/yr) = 12%
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Step 4. Make projections For higher long-term SLR (3 mm/year): Prob. (Erosion < -1 m/yr) = 52%
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Mapping Erosion Risk Using Bayesian Networks Probability of shoreline erosion >2 m/yr Miami D.C. New York Boston Charleston (Gutierrez et al., 2011)
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Uncertainty map can be used to identify where better information is needed Areas of low confidence require better input data better understanding of processes Can use this map to focus research resources Mapping Prediction Uncertainty Higher probability = higher certainty of outcome (Gutierrez et al., 2011)
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Low Current conditionsSLR +1 mm/yr, Wave ht. +10% Erosion rate Higher likelihood of erosion Broader distributions Increased uncertainty Narrow probability distributions Relatively low uncertainty High Probability Application of a Bayesian network to an uncertain future: Probability of shoreline erosion >1 m/yr at Assateague Island National Seashore 0.2 0 0.4 0.6 0.8 1 0.2
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Bill Byrne, MA F&W Listed species DOI management responsibility Lifecycle includes substantial time on NPS lands for breeding, migrating, wintering Have interesting and specific habitat requirements that we can predict Rangewide habitat availability Attributes and distribution of breeding, foraging areas Wave run-up and inundation sensitivity (morphologic and hydrodynamic detail) Can feed predictions back into population dynamics models Decision Support for DOI Agencies Piping plover, C. melodus
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Plovers in a Bayesian Network Foredune height (in x-section) Elevation Barrier cross- sectional area or width Geomorphic Setting Overwash fan Dune Marsh Ephemeral pools Vegetation Density Absent Ligh Moderate High Shoreline Change Rate for x-section Plover Presence (outcome) Sediment type Horiz. Dist to MHW Horiz. Dist to MOSH Prey abundance Horiz. Dist to ephem. pools
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Summary Future sea-level rise is problematic It is a certain impact (we have already made a commitment to several centuries of SLR) It is an uncertain impact (rates and magnitudes poorly constrained; human response unknown) Effective climate change decision support will require changes in how we do science and how decision makers assimilate and use scientific information Probabilistic approaches have many applications Convey what we know and what we know we don’t know Synthesize data and models Provide basis to focus research resources Furnish information to support decision-making
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