2021 23rd International Conference on Advanced Communication Technology (ICACT) | 2021

Sea Surface Temperature Prediction Approach Based on 3D CNN and LSTM with Attention Mechanism

 
 
 
 

Abstract


Sea Surface Temperature (SST) is an important physical quantity of the ocean system. The accurate prediction of SST is essential for studying physical ocean phenomena and forecasting the ocean environment information. In this paper, a SST prediction approach based on 3-Diminsional Convolutional Neural Network (3D CNN) and Long Short-Term Memory (LSTM) network with attention mechanism is proposed, which considers the spatial correlation and temporal dependency of SST data. Firstly, the machine learning algorithm XGBoost is used to extract the long period time features of each SST data. Then the 3D CNN is used to capture the spatial correlations among SST field data composed of multiple observation points in a selected sea area, followed by the LSTM model to extract the time dependency features of the SST field time series data, and the attention mechanism is added to weight the output of each step of LSTM model to adjust the prediction results and improve the prediction accuracy of the approach. A series of experimental results show that the proposed approach has lower complexity, higher training efficiency and prediction accuracy, which is significantly better than the existing prediction models.

Volume None
Pages 342-347
DOI 10.23919/ICACT51234.2021.9370514
Language English
Journal 2021 23rd International Conference on Advanced Communication Technology (ICACT)

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