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A Bayesian network to predict coastal vulnerability to sea level rise

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Publication Date

Citation

Gutierrez, Benjamin T., Plant, Nathaniel G., and Thieler, E. Robert, 2011-04-22, A Bayesian network to predict coastal vulnerability to sea level rise: Journal of Geophysical Research: Earth Surface (2003–2012), v. 116, iss. F2.

Summary

Sea level rise during the 21st century will have a wide range of effects on coastal environments, human development, and infrastructure in coastal areas. The broad range of complex factors influencing coastal systems contributes to large uncertainties in predicting long-term sea level rise impacts. Here we explore and demonstrate the capabilities of a Bayesian network (BN) to predict long-term shoreline change associated with sea level rise and make quantitative assessments of prediction uncertainty. A BN is used to define relationships between driving forces, geologic constraints, and coastal response for the U.S. Atlantic coast that include observations of local rates of relative sea level rise, wave height, tide range, geomorphic [...]

Contacts

Attached Files

Communities

  • National and Regional Climate Adaptation Science Centers
  • Southeast CASC

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Organization
Water, Coasts and Ice
Science Themes
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Created from Item #52900e4ce4b0660d392cc126

Additional Information

Citation Extension

journalJournal of Geophysical Research: Earth Surface (2003–2012)
parts
typedoi
value10.1029/2010JF001891
typeissn
value2156-2202
typeissue
valueF2
typevolume
value116

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