Author:
Lee Geun Se,Jeong Dong Hyeon,Moon Yong Ho,Park Won Kyung,Chae Jang Won
Abstract
In this study, deep learning model was set up to predict the wave heights inside a harbour. Various machine learning techniques were applied to the model in consideration of the transformation characteristics of offshore waves while propagating into the harbour. Pohang New Port was selected for model application, which had a serious problem of unloading due to swell and has lots of available wave data. Wave height, wave period, and wave direction at offshore sites and wave heights inside the harbour were used for the model input and output, respectively, and then the model was trained using deep learning method. By considering the correlation between the time series wave data of offshore and inside the harbour, the data set was separated into prevailing wave directions as a pre-processing method. As a result, It was confirmed that accuracy and stability of the model prediction are considerably increased.
Funder
Ministry of Oceans and Fisheries
Korea Institute of Marine Science and Technology promotion
Publisher
Korean Society of Coastal and Ocean Engineers
Cited by
1 articles.
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