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Blind testing of shoreline evolution models.

Jennifer Montaño1, Giovanni Coco2, Jose A A Antolínez3

  • 1School of Environment, Faculty of Science, University of Auckland, Auckland, 1010, New Zealand. jmon177@aucklanduni.ac.nz.

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Summary
This summary is machine-generated.

Predicting shoreline evolution remains challenging. A modeling competition showed that while traditional and machine learning models performed well under normal conditions, both struggled with extreme changes, highlighting the need for improved predictive techniques.

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Area of Science:

  • Coastal geomorphology
  • Computational modeling
  • Machine learning applications

Background:

  • Beaches globally experience dynamic changes due to waves and tides.
  • Accurate prediction of shoreline evolution is difficult, even for short-term (decadal) forecasts.

Purpose of the Study:

  • To evaluate the predictive capabilities of various numerical and machine learning models for shoreline evolution.
  • To compare model performance using real-world data from Tairua beach, New Zealand.

Main Methods:

  • A modeling competition involving 19 diverse numerical models and machine learning techniques.
  • Utilized 18 years of daily shoreline position and beach rotation data from a camera system.
  • Models were calibrated on historical data (1999-2014) and tested on unseen forecast data (2014-2017).

Main Results:

  • Both traditional and machine learning models accurately reproduced shoreline changes during normal conditions in the calibration period.
  • Predictive accuracy decreased for both approaches during the forecast period, particularly for some machine learning algorithms.
  • Model ensembles demonstrated superior performance and allowed for uncertainty assessment.

Conclusions:

  • Current shoreline evolution models face limitations in predicting extreme and rapid coastal changes.
  • Model ensembles offer a more robust approach to forecasting and uncertainty quantification.
  • Collaborative research initiatives like modeling competitions are crucial for advancing coastal prediction science.