4.6 Article

Estimating dune erosion at the regional scale using a meta-model based onneural networks

Journal

NATURAL HAZARDS AND EARTH SYSTEM SCIENCES
Volume 22, Issue 12, Pages 3897-3915

Publisher

COPERNICUS GESELLSCHAFT MBH
DOI: 10.5194/nhess-22-3897-2022

Keywords

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Funding

  1. Deltares Strategic Research Programme Natural Hazards
  2. Alessio Giardino by the Research Programme Seas and Coastal Zones
  3. AXA research fund
  4. Deltares Research Programme Seas and Coastal Zones

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A meta-model based on artificial neural networks (ANNs) is designed to predict dune erosion volume (DEV) at the Dutch coast, which can provide faster and accurate predictions compared to process-based models. The meta-model can be integrated into early warning systems and facilitate investigations on dune response in large coastal areas.
Sandy beaches and dune systems have high recreational and ecological value, and they offer protection against flooding during storms. At the same time, these systems are very vulnerable to storm impacts. Process-based numerical models are presently used to assess the morphological changes of dune and beach systems during storms. However, such models come with high computational costs, hindering their use in real-life applications which demand many simulations and/or involve a large spatial-temporal domain. Here we design a novel meta-model to predict dune erosion volume (DEV) at the Dutch coast, based on artificial neural networks (ANNs), trained with cases from process-based modeling. First, we reduce an initial database of & SIM;1400 observed sandy profiles along the Dutch coastline to 100 representative typological coastal profiles (TCPs). Next, we synthesize a set of plausible extreme storm events, which reproduces the probability distributions and statistical dependencies of offshore wave and water level records. We choose 100 of these events to simulate the dune response of the 100 TCPs using the process-based model XBeach, resulting in 10 000 cases. Using these cases as training data, we design a two-phase meta-model, comprised of a classifying ANN (which predicts the occurrence (or not) of erosion) and a regression ANN (which gives a DEV prediction). Validation against a benchmark dataset created with XBeach and a sparse set of available dune erosion observations shows high prediction skill with a skill score of 0.82. The meta-model can predict post-storm DEV 103-104 times faster (depending on the duration of the storm) than running XBeach. Hence, this model may be integrated in early warning systems or allow coastal engineers and managers to upscale storm forcing to dune response investigations to large coastal areas with relative ease.

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