A Novel Method for Sea Surface Temperature Prediction Based on Deep Learning

Author:

Yu Xuan1ORCID,Shi Suixiang12ORCID,Xu Lingyu13ORCID,Liu Yaya1ORCID,Miao Qingsheng4ORCID,Sun Miao2ORCID

Affiliation:

1. School of Computer Engineering and Science, Shanghai University, Shanghai 200444, China

2. Key Laboratory of Digital Ocean, National Marine Data and Information Service, Tianjin 300171, China

3. Shanghai Institute for Advanced Communication and Data Science, Shanghai University, Shanghai 200444, China

4. Marine Data Center, National Marine Data and Information Service, Tianjin 300171, China

Abstract

Sea surface temperature (SST) forecasting is the task of predicting future values of a given sequence using historical SST data, which is beneficial for observing and studying hydroclimatic variability. Most previous studies ignore the spatial information in SST prediction and the forecasting models have limitations to process the large-scale SST data. A novel model of SST prediction integrated Deep Gated Recurrent Unit and Convolutional Neural Network (DGCnetwork) is proposed in this paper. The DGCnetwork has a compact structure and focuses on learning deep long-term dependencies in SST time series. Temporal information and spatial information are all included in our procedure. Differential Evolution algorithm is applied in order to configure DGCnetwork’s optimum architecture. Optimum Interpolation Sea Surface Temperature (OISST) data is selected to conduct experiments in this paper, which has good temporal homogeneity and feature resolution. The experiments demonstrate that the DGCnetwork significantly obtains excellent forecasting result, predicting SST by different lengths flexibly and accurately. On the East China Sea dataset and the Yellow Sea dataset, the accuracy of the prediction results is above 98% on the whole and all mean absolute error (MAE) values are lower than 0.33°C. Compared with the other models, root mean square error (RMSE), root mean square percentage error (RMSPE), and mean absolute percentage Error (MAPE) of the proposed approach reduce at least 0.1154, 0.2594, and 0.3938. The experiments of SST time series show that the DGCnetwork model maintains good prediction results, better performance, and stronger stability, which has reached the most advanced level internationally.

Funder

National Program on Key Research Project of China

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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