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Nonlinear forecasting of intertidal shoreface evolution.

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  • 1Integrative Oceanography Division, Scripps Institution of Oceanography, University of California San Diego, La Jolla, California 92037, USA.

Chaos (Woodbury, N.Y.)
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This summary is machine-generated.

Coastal erosion is hard to predict, but machine learning can forecast shoreline changes. This study shows that internal coastal dynamics, not just external forces, drive erosion, enabling better predictions.

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Area of Science:

  • Coastal geomorphology
  • Remote sensing
  • Machine learning

Background:

  • Forecasting coastal evolution is challenging due to complex sediment transport and hydrodynamics.
  • Coastal regions face threats from sea-level rise and storm damage, impacting infrastructure and economies.
  • Accurate intermediate-scale (daily, tens of meters) forecasts are limited by data availability and process complexity.

Purpose of the Study:

  • To develop and validate methods for forecasting coastline evolution using remote sensing and machine learning.
  • To investigate the dominant drivers of coastal morphology at intermediate spatiotemporal scales.
  • To assess the predictive skill of forecasting techniques without explicit knowledge of external forcing.

Main Methods:

  • Utilized a solar-powered digital camera for coastal monitoring and data collection.
  • Implemented machine learning algorithms to extract shoreline data and estimate daily intertidal coastal profiles.
  • Applied nonlinear time series forecasting and genetic programming to analyze coastal dynamics.

Main Results:

  • Coastal morphology at intermediate scales is primarily driven by nonlinear internal dynamics.
  • These internal dynamics can mask the influence of external forcing factors.
  • Forecasting techniques demonstrated significant predictive skill, explaining up to 43% of the variance in one-day predictions of the upper coastline profile.

Conclusions:

  • Societally relevant coastline forecasts are achievable using advanced data analysis techniques.
  • Predictive models can be effective even without complete knowledge of the forcing environment or governing equations.
  • This approach offers a pathway to improved coastal management and infrastructure protection.