๐‘Ž๐‘™๐‘โ„Ž๐‘ŽBeach: Self-attention-based spatiotemporal network for skillful prediction of shoreline changes multiple days ahead SCIE SCOPUS

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Title
๐‘Ž๐‘™๐‘โ„Ž๐‘ŽBeach: Self-attention-based spatiotemporal network for skillful prediction of shoreline changes multiple days ahead
Author(s)
Kim, Jinah; Kim, Taekyung; Yun, Miyoung; Kim, Inho; Do, Kideok
KIOST Author(s)
Kim, Jinah(๊น€์ง„์•„)Kim, Taekyung(๊น€ํƒœ๊ฒฝ)
Alternative Author(s)
๊น€์ง„์•„; ๊น€ํƒœ๊ฒฝ
Publication Year
2024-12
Abstract
We developed a self-attention-based spatiotemporal network called alpha Beach that uses spatiotemporal representation learning for skillful prediction of shoreline changes multiple days ahead. The proposed model predicts the spatiotemporal position of the shoreline up to seven consecutive days in the future based on hydrodynamic forcing of ocean waves and tide data for the past 30 consecutive days. It is further divided into alpha Beach-w/o IC and alphaBeach-w/ IC depending on whether or not the beach state of the antecedent historical shoreline information is used as the initial condition. alpha Beach-w/o IC, which does not incorporate this information, learns the sequential relationship between hydrodynamic forcing and shoreline to estimate overall trends of shoreline changes including seasonal oscillation from the point in time after model training, given only the ocean waves and tides. alphaBeach-w/ IC does incorporate antecedent historical shoreline information to greatly enhance its predictive accuracy of shoreline progradation, retreat, and beach rotation for short-term time scales and for extreme storm events. The proposed model was applied to Tairua Beach, New Zealand, and it demonstrated superior predictive accuracy compared to previous methods and matched current understanding of accretion-dominated and oscillation-dominated shoreline changes.
ISSN
0141-1187
URI
https://sciwatch.kiost.ac.kr/handle/2020.kiost/46273
DOI
10.1016/j.apor.2024.104292
Bibliographic Citation
Applied Ocean Research, v.153, 2024
Publisher
Pergamon Press Ltd.
Keywords
Shoreline progradation-retreat-beach rotation; Shoreline change; Spatiotemporal representation learning; Multi-step-ahead forecasting
Type
Article
Language
English
Document Type
Article
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