Understanding land loss or resilience in response to sea-level rise (SLR) requires spatially extensive and continuous datasets to capture landscape variability. We investigate the sensitivity and skill of a model that predicts dynamic response likelihood to SLR across the northeastern US by exploring several data inputs and outcomes. Using elevation and land cover datasets, we determine where data error is likely, quantify its effect on predictions, and evaluate its influence on prediction confidence. Results show data error is concentrated in low-lying areas with little impact on prediction skill, as the inherent correlation between the datasets can be exploited to reduce data uncertainty using Bayesian inference. This suggests the approach may be extended to regions with limited data availability and/or poor quality. Furthermore, we verify that model sensitivity in these first-order landscape change assessments is well-matched to larger coastal process uncertainties, for which process-based models are important complements to further reduce uncertainty.
机构:
South Florida Water Management Dist, Hydrol Syst Modeling Div, 3301 Gun Club Rd, W Palm Beach, FL 33406 USASouth Florida Water Management Dist, Hydrol Syst Modeling Div, 3301 Gun Club Rd, W Palm Beach, FL 33406 USA
Trimble, P. J.
Santee, E. R.
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South Florida Water Management Dist, Hydrol Syst Modeling Div, 3301 Gun Club Rd, W Palm Beach, FL 33406 USASouth Florida Water Management Dist, Hydrol Syst Modeling Div, 3301 Gun Club Rd, W Palm Beach, FL 33406 USA
Santee, E. R.
Neidrauer, C. J.
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South Florida Water Management Dist, Hydrol Syst Modeling Div, 3301 Gun Club Rd, W Palm Beach, FL 33406 USASouth Florida Water Management Dist, Hydrol Syst Modeling Div, 3301 Gun Club Rd, W Palm Beach, FL 33406 USA