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A Machine-Learning Approach Based on Attention Mechanism for Significant Wave Height Forecasting
by
Shi, Jiao
, Cui, Jingjing
, Su, Tianyun
, Wang, Fuwei
, Liu, Zhendong
, Li, Xinfang
, Wang, Jie
in
Accuracy
/ Algorithms
/ Classification
/ Coastal engineering
/ Comparative analysis
/ El Nino
/ Forecasting
/ Learning algorithms
/ Long short-term memory
/ long-sequence forecasting
/ Machine learning
/ Marine sciences
/ Mathematical models
/ Monitoring
/ Neural networks
/ Numerical models
/ Oceanic analysis
/ Sequences
/ Shipping
/ Shipping industry
/ Significant wave height
/ significant wave height forecasting
/ Teaching methods
/ Technical services
/ Time series
/ transformer
/ Transformers
/ Wave height
/ wave scale classification
2023
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A Machine-Learning Approach Based on Attention Mechanism for Significant Wave Height Forecasting
by
Shi, Jiao
, Cui, Jingjing
, Su, Tianyun
, Wang, Fuwei
, Liu, Zhendong
, Li, Xinfang
, Wang, Jie
in
Accuracy
/ Algorithms
/ Classification
/ Coastal engineering
/ Comparative analysis
/ El Nino
/ Forecasting
/ Learning algorithms
/ Long short-term memory
/ long-sequence forecasting
/ Machine learning
/ Marine sciences
/ Mathematical models
/ Monitoring
/ Neural networks
/ Numerical models
/ Oceanic analysis
/ Sequences
/ Shipping
/ Shipping industry
/ Significant wave height
/ significant wave height forecasting
/ Teaching methods
/ Technical services
/ Time series
/ transformer
/ Transformers
/ Wave height
/ wave scale classification
2023
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Do you wish to request the book?
A Machine-Learning Approach Based on Attention Mechanism for Significant Wave Height Forecasting
by
Shi, Jiao
, Cui, Jingjing
, Su, Tianyun
, Wang, Fuwei
, Liu, Zhendong
, Li, Xinfang
, Wang, Jie
in
Accuracy
/ Algorithms
/ Classification
/ Coastal engineering
/ Comparative analysis
/ El Nino
/ Forecasting
/ Learning algorithms
/ Long short-term memory
/ long-sequence forecasting
/ Machine learning
/ Marine sciences
/ Mathematical models
/ Monitoring
/ Neural networks
/ Numerical models
/ Oceanic analysis
/ Sequences
/ Shipping
/ Shipping industry
/ Significant wave height
/ significant wave height forecasting
/ Teaching methods
/ Technical services
/ Time series
/ transformer
/ Transformers
/ Wave height
/ wave scale classification
2023
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A Machine-Learning Approach Based on Attention Mechanism for Significant Wave Height Forecasting
Journal Article
A Machine-Learning Approach Based on Attention Mechanism for Significant Wave Height Forecasting
2023
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Overview
Significant wave height (SWH) is a key parameter for monitoring the state of waves. Accurate and long-term SWH forecasting is significant to maritime shipping and coastal engineering. This study proposes a transformer model based on an attention mechanism to achieve the forecasting of SWHs. The transformer model can capture the contextual information and dependencies between sequences and achieves continuous time series forecasting. Wave scale classification is carried out according to the forecasting results, and the results are compared with gated recurrent unit (GRU) and long short-term memory (LSTM) machine-learning models and the key laboratory of MArine Science and NUmerical Modeling (MASNUM) numerical wave model. The results show that the machine-learning models outperform the MASNUM within 72 h, with the transformer being the best model. For continuous 12 h, 24 h, 36 h, 48 h, 72 h, and 96 h forecasting, the average mean absolute errors (MAEs) of the test sets were, respectively, 0.139 m, 0.186 m, 0.223 m, 0.254 m, 0.302 m, and 0.329 m, and the wave scale classification accuracies were, respectively, 91.1%, 99.4%, 86%, 83.3%, 78.9%, and 77.5%. The experimental results validate that the transformer model can achieve continuous and accurate SWH forecasting, as well as accurate wave scale classification and early warning of waves, providing technical support for wave monitoring.
Publisher
MDPI AG
Subject
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