Review on Applications of Machine Learning in Coastal and Ocean Engineering

Recently, an analysis method using machine learning for solving problems in coastal and ocean engineering has been highlighted. Machine learning models are effective modeling tools for predicting specific parameters by learning complex relationships based on a specified dataset. In coastal and ocean...

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Published inHan-guk haeyang gonghak hoeji (Online) Vol. 36; no. 3; pp. 194 - 210
Main Authors Kim, Taeyoon, Lee, Woo-Dong
Format Journal Article
LanguageEnglish
Published 한국해양공학회 01.06.2022
The Korean Society of Ocean Engineers
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Online AccessGet full text
ISSN1225-0767
2287-6715
DOI10.26748/KSOE.2022.007

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Summary:Recently, an analysis method using machine learning for solving problems in coastal and ocean engineering has been highlighted. Machine learning models are effective modeling tools for predicting specific parameters by learning complex relationships based on a specified dataset. In coastal and ocean engineering, various studies have been conducted to predict dependent variables such as wave parameters, tides, storm surges, design parameters, and shoreline fluctuations. Herein, we introduce and describe the application trend of machine learning models in coastal and ocean engineering. Based on the results of various studies, machine learning models are an effective alternative to approaches involving data requirements, time-consuming fluid dynamics, and numerical models. In addition, machine learning can be successfully applied for solving various problems in coastal and ocean engineering. However, to achieve accurate predictions, model development should be conducted in addition to data preprocessing and cost calculation. Furthermore, applicability to various systems and quantifiable evaluations of uncertainty should be considered.
Bibliography:https://www.joet.org/journal/view.php?doi=10.26748/KSOE.2022.007
ISSN:1225-0767
2287-6715
DOI:10.26748/KSOE.2022.007