Ocean Reanalysis Data‐Driven Deep Learning Forecast for Sea Surface Multivariate in the South China Sea
Abstract Most prediction models based on artificial neural networks (ANNs) are site‐specific and do not provide simultaneous spatial information similar to numerical schemes. Such ANNs do not account for the correlations across grid points or the dynamic balance among different variables, which is a...
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2021-07-01
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doaj-528a31498f5e4f918359feb4974424042021-07-27T22:20:33ZengAmerican Geophysical Union (AGU)Earth and Space Science2333-50842021-07-0187n/an/a10.1029/2020EA001558Ocean Reanalysis Data‐Driven Deep Learning Forecast for Sea Surface Multivariate in the South China SeaQi Shao0Guangchao Hou1Wei Li2Guijun Han3Kangzhuang Liang4Yang Bai5School of Marine Science and Technology Tianjin University Tianjin ChinaSchool of Marine Science and Technology Tianjin University Tianjin ChinaSchool of Marine Science and Technology Tianjin University Tianjin ChinaSchool of Marine Science and Technology Tianjin University Tianjin ChinaSchool of Marine Science and Technology Tianjin University Tianjin ChinaSchool of Marine Science and Technology Tianjin University Tianjin ChinaAbstract Most prediction models based on artificial neural networks (ANNs) are site‐specific and do not provide simultaneous spatial information similar to numerical schemes. Such ANNs do not account for the correlations across grid points or the dynamic balance among different variables, which is an obvious physical defect. Moreover, such methods generally perform well on a single scale, while the actual marine environmental variability is multiscale. To cope with these issues, a data‐driven hybrid model based on ocean reanalysis is developed. This model combines empirical orthogonal function (EOF) analysis and complete ensemble empirical mode decomposition (CEEMD) with ANN (referred to as EOF‐CEEMD‐ANN). The results demonstrate that the EOF‐CEEMD‐ANN model is efficient for mid‐term predictions of sea surface multivariate including sea surface height (SSH), temperature (SST), salinity (SSS), and velocity (SSV) in the entire South China Sea (SCS) region. During the 30 days forecast window, the root‐mean‐square errors (RMSEs) of this model forecasts for SSH, SST, SSS, U, and V at the end of the forecast window are about 0.042 m, 0.52°C, 0.08 psu, 0.073 m/s, and 0.064 m/s, respectively, which are much smaller than those with persistence and optimal climatic normal (OCN) prediction. The anomaly correlation coefficients (ACCs) are approximately 0.75, 0.66, 0.73, 0.69, and 0.71, respectively. Case studies show that eddies and their evolutions can be simulated well by this model.https://doi.org/10.1029/2020EA001558data‐drivenartificial neural networkmid‐term predictionspatio‐temporal prediction modelmultivariate |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Qi Shao Guangchao Hou Wei Li Guijun Han Kangzhuang Liang Yang Bai |
spellingShingle |
Qi Shao Guangchao Hou Wei Li Guijun Han Kangzhuang Liang Yang Bai Ocean Reanalysis Data‐Driven Deep Learning Forecast for Sea Surface Multivariate in the South China Sea Earth and Space Science data‐driven artificial neural network mid‐term prediction spatio‐temporal prediction model multivariate |
author_facet |
Qi Shao Guangchao Hou Wei Li Guijun Han Kangzhuang Liang Yang Bai |
author_sort |
Qi Shao |
title |
Ocean Reanalysis Data‐Driven Deep Learning Forecast for Sea Surface Multivariate in the South China Sea |
title_short |
Ocean Reanalysis Data‐Driven Deep Learning Forecast for Sea Surface Multivariate in the South China Sea |
title_full |
Ocean Reanalysis Data‐Driven Deep Learning Forecast for Sea Surface Multivariate in the South China Sea |
title_fullStr |
Ocean Reanalysis Data‐Driven Deep Learning Forecast for Sea Surface Multivariate in the South China Sea |
title_full_unstemmed |
Ocean Reanalysis Data‐Driven Deep Learning Forecast for Sea Surface Multivariate in the South China Sea |
title_sort |
ocean reanalysis data‐driven deep learning forecast for sea surface multivariate in the south china sea |
publisher |
American Geophysical Union (AGU) |
series |
Earth and Space Science |
issn |
2333-5084 |
publishDate |
2021-07-01 |
description |
Abstract Most prediction models based on artificial neural networks (ANNs) are site‐specific and do not provide simultaneous spatial information similar to numerical schemes. Such ANNs do not account for the correlations across grid points or the dynamic balance among different variables, which is an obvious physical defect. Moreover, such methods generally perform well on a single scale, while the actual marine environmental variability is multiscale. To cope with these issues, a data‐driven hybrid model based on ocean reanalysis is developed. This model combines empirical orthogonal function (EOF) analysis and complete ensemble empirical mode decomposition (CEEMD) with ANN (referred to as EOF‐CEEMD‐ANN). The results demonstrate that the EOF‐CEEMD‐ANN model is efficient for mid‐term predictions of sea surface multivariate including sea surface height (SSH), temperature (SST), salinity (SSS), and velocity (SSV) in the entire South China Sea (SCS) region. During the 30 days forecast window, the root‐mean‐square errors (RMSEs) of this model forecasts for SSH, SST, SSS, U, and V at the end of the forecast window are about 0.042 m, 0.52°C, 0.08 psu, 0.073 m/s, and 0.064 m/s, respectively, which are much smaller than those with persistence and optimal climatic normal (OCN) prediction. The anomaly correlation coefficients (ACCs) are approximately 0.75, 0.66, 0.73, 0.69, and 0.71, respectively. Case studies show that eddies and their evolutions can be simulated well by this model. |
topic |
data‐driven artificial neural network mid‐term prediction spatio‐temporal prediction model multivariate |
url |
https://doi.org/10.1029/2020EA001558 |
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