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Extended Kalman Filter framework for forecasting shoreline evolution

December 31, 2012

A shoreline change model incorporating both long- and short-term evolution is integrated into a data assimilation framework that uses sparse observations to generate an updated forecast of shoreline position and to estimate unobserved geophysical variables and model parameters. Application of the assimilation algorithm provides quantitative statistical estimates of combined model-data forecast uncertainty which is crucial for developing hazard vulnerability assessments, evaluation of prediction skill, and identifying future data collection needs. Significant attention is given to the estimation of four non-observable parameter values and separating two scales of shoreline evolution using only one observable morphological quantity (i.e. shoreline position).

Publication Year 2012
Title Extended Kalman Filter framework for forecasting shoreline evolution
DOI 10.1029/2012GL052180
Authors Joseph Long, Nathaniel G. Plant
Publication Type Article
Publication Subtype Journal Article
Series Title Geophysical Research Letters
Index ID 70048356
Record Source USGS Publications Warehouse
USGS Organization St. Petersburg Coastal and Marine Science Center