Abstract

Forecasting shoreline evolution for sandy coasts is important for sustainable coastal management, given the present-day increasing anthropogenic pressures and a changing future climate. Here, we evaluate eight different time-series forecasting methods for predicting future shorelines derived from historic satellite-derived shorelines. Analyzing more than 37,000 transects around the globe, we find that traditional forecast methods altogether with some of the evaluated probabilistic Machine Learning (ML) time-series forecast algorithms, outperform Ordinary Least Squares (OLS) predictions for the majority of the sites. When forecasting seven years ahead, we find that these algorithms generate better predictions than OLS for 54% of the transect sites, producing forecasts with, on average, 29% smaller Mean Squared Error (MSE). Importantly, this advantage is shown to exist over all considered forecast horizons, i.e., from 1 up to 11 years. Although the ML algorithms do not produce significantly better predictions than traditional time-series forecast methods, some proved to be significantly more efficient in terms of computation time. We further provide insight in how these ML algorithms can be improved so that they can be expected to outperform not only OLS regression, but also the traditional time-series forecast methods. These forecasting algorithms can be used by coastal engineers, managers, and scientists to generate future shoreline prediction at a global level and derive conclusions thereof.

Highlights

  • Sandy beaches form an essential part of coastal zones as they play a key role in the ecosystem, while providing socio-economic values and services at the same time

  • Autoregressive Integrateded Moving Average (ARIMA) altogether with Machine Learning (ML) models SimpleFFN, DeepAR, MQCNN are more skilled than Ordinary Least Squares (OLS) regression for the majority of study sites

  • This study has shown that the forecast advantage of these algorithms over OLS regression exists for all considered forecast horizons

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Summary

Introduction

Sandy beaches form an essential part of coastal zones as they play a key role in the ecosystem, while providing socio-economic values and services at the same time. Shoreline retreat can be harmful to coastal communities, natural preserves and infrastructure. It is, important that effective management of sandy shores includes sustainable multiple use that does not comprise the future [2]. Effective management further requires optimal longterm sustainable use of the sandy coasts and maintenance of the most natural environment possible [2]. To meet these demands, coastal managers have an increasing need for accurate shoreline predictions, which empowers them to assess vulnerability and protect coastal infrastructure, human safety and habitats [3]

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