Abnormally High Water Temperature Prediction using Deep Learning Technology SCIE SCOPUS

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Title
Abnormally High Water Temperature Prediction using Deep Learning Technology
Author(s)
Yang H.
Alternative Author(s)
양현
Publication Year
2020-05
Abstract
Recently, abnormally high water temperature (AHWT) phenomena have caused extensive damage to the maritime economy of Korea. These phenomena have caused the mass stranding of farmed fish around the Korean coast and have also caused illnesses by facilitating the propagation of Vibrio pathogens. To reduce damage by AHWT phenomena, it is necessary to respond as quickly as possible or to predict such events in advance. Therefore, in this study, a methodology using satellite big data and a deep-learning technology was proposed to forecast AHWT occurrences. First, the deep-learning model was trained using the long short-term memory (LSTM) architecture. Then, AHWT occurrences were predicted using the trained model. It is expected that the use of this methodology will effectively reduce the damage from AHWT phenomena and protect the maritime economy.
ISSN
0749-0208
URI
https://sciwatch.kiost.ac.kr/handle/2020.kiost/38647
DOI
10.2112/SI95-299.1
Bibliographic Citation
Journal of Coastal Research, v.95, no.sp1, pp.1553 - 1557, 2020
Publisher
Coastal Education Research Foundation Inc.
Keywords
Abnormally high water temperature; AHWT; satellite big data; maritime climate; artificial; neural network
Type
Article
Language
English
Document Type
Article
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