Published in

MDPI, Journal of Marine Science and Engineering, 10(8), p. 805, 2020

DOI: 10.3390/jmse8100805

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Prediction of Ocean Weather Based on Denoising AutoEncoder and Convolutional LSTM

Journal article published in 2020 by Ki-Su Kim ORCID, June-Beom Lee, Myung-Il Roh ORCID, Ki-Min Han, Gap-Heon Lee
This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

The path planning of a ship requires much information, and one of the essential factors is predicting the ocean environment. Ocean weather can generally be gathered from forecasting information provided by weather centers. However, these data are difficult to obtain when satellite communication is unstable during voyages, or there are cases where forecast data for a more extended period of time are needed for the operation of the fleet. Therefore, shipping companies and classification societies have attempted to establish a model for predicting the ocean weather on its own. Historically, ocean weather has been primarily predicted using empirical and numerical methods. Recently, a method for predicting ocean weather using deep learning has emerged. In this study, a deep learning model combining a denoising AutoEncoder and convolutional long short-term memory (LSTM) was proposed to predict the ocean weather worldwide. The denoising AutoEncoder is effective for removing noise that hinders the training of deep learning models. While the LSTM could be used as time-series inputs at specific points, the convolutional LSTM can use time-series images as inputs, making them suitable for predicting a wide range of ocean weather. Herein, using the proposed model, eight parameters of ocean weather were predicted. The proposed learning model predicted ocean weather after one week, showing an average error of 6.7%. The results show the applicability of the proposed learning model for predicting ocean weather.