中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
A coupled Swin transformer-LSTM network for high-resolution ocean wave forecasting: A reanalysis-driven skill assessment in the Chinese marginal seas

文献类型:期刊论文

作者Liu, Yongqiang1,2,3,5; Li, Delei1; Gong, Xiang3; Feng, Jianlong1; Liu, Hailong1; Qi, Jifeng2,4,5; Yin, Baoshu2,4,5
刊名JOURNAL OF SEA RESEARCH
出版日期2026-03-01
卷号210页码:16
关键词Significant wave height Deep learning SwinLSTM Spatiotemporal forecast Chinese marginal seas
ISSN号1385-1101
DOI10.1016/j.seares.2026.102670
通讯作者Li, Delei(dlli@lsnl.cn) ; Gong, Xiang(gongxiang@qust.edu.cn)
英文摘要Accurate wave forecasting is essential for maritime safety and provides crucial scientific guidance for coastal operations and planning. Most artificial intelligence-based wave forecast models were conducted at coarse resolutions, e.g., 0.25 degrees or 0.5 degrees spatial resolution, and struggled to maintain high forecasting accuracy for extended periods. Here, we introduce the coupled Swin Transformer-LSTM network (SwinLSTM), a hybrid architecture designed to make a spatiotemporal forecast of significant wave height (SWH) at a 0.1-degree resolution over 72-h lead-time in the Bohai Sea, Yellow Sea, and East China Sea. In this study, both historical and lead-time wind fields are taken from the ERA5 reanalysis; therefore, the reported skill reflects a reanalysis-driven (hindcast-style) evaluation that provides an upper-bound estimate under near-perfect wind forcing. The SwinLSTM architecture effectively captures spatial dependencies, simultaneously extracting both long-term and short-term spatiotemporal dependencies in ocean wave dynamics for efficient two-dimensional spatial forecasting. Through sensitivity experiments, the optimal configuration was determined, with historical wind, SWH, topography, and ERA5 reanalysis future wind (used here as a proxy forcing for lead-time prediction) identified as the optimal input combinations using a 6-h encoding time step. Based on comprehensive model evaluation with this optimal configuration, our results demonstrate that for forecast horizons of 1-, 6-, 12-, 24-, 48-, and 72-h, the spatially averaged root mean square error (RMSE) values are 0.113, 0.121, 0.155, 0.190, 0.221, and 0.232 m, respectively, with corresponding spatial correlation coefficients (CC) of 0.989, 0.987, 0.980, 0.972, 0.963, and 0.960. For forecast lead times longer than 12-h, comparisons show that our model is among the best ones in AI-based wave models, showing high prediction accuracy while maintaining satisfactory stability and robustness across different temporal scales. The wave forecast capability and robustness were validated under conditions of cold air outbreaks and typhoon events, demonstrating the model's ability to capture the spatial distribution and temporal evolution of extreme wave events. These findings demonstrate the potential for high-resolution SWH forecasting with enhanced accuracy and efficiency.
资助项目National Natural Science Foundation of China[42176203] ; National Natural Science Foundation of China[42176198] ; Taishan Scholars Program[tsqn202211252]
WOS研究方向Marine & Freshwater Biology ; Oceanography
语种英语
WOS记录号WOS:001674232200001
出版者ELSEVIER
源URL[http://ir.qdio.ac.cn/handle/337002/204625]  
专题海洋研究所_海洋环流与波动重点实验室
通讯作者Li, Delei; Gong, Xiang
作者单位1.Laoshan Lab, Qingdao, Peoples R China
2.Chinese Acad Sci, Key Lab Ocean Observat & Forecasting, Qingdao, Peoples R China
3.Qingdao Univ Sci & Technol, Sch Math & Phys, Qingdao, Peoples R China
4.Univ Chinese Acad Sci, Beijing, Peoples R China
5.Chinese Acad Sci, Inst Oceanol, Lab Ocean Circulat & Waves, Qingdao, Peoples R China
推荐引用方式
GB/T 7714
Liu, Yongqiang,Li, Delei,Gong, Xiang,et al. A coupled Swin transformer-LSTM network for high-resolution ocean wave forecasting: A reanalysis-driven skill assessment in the Chinese marginal seas[J]. JOURNAL OF SEA RESEARCH,2026,210:16.
APA Liu, Yongqiang.,Li, Delei.,Gong, Xiang.,Feng, Jianlong.,Liu, Hailong.,...&Yin, Baoshu.(2026).A coupled Swin transformer-LSTM network for high-resolution ocean wave forecasting: A reanalysis-driven skill assessment in the Chinese marginal seas.JOURNAL OF SEA RESEARCH,210,16.
MLA Liu, Yongqiang,et al."A coupled Swin transformer-LSTM network for high-resolution ocean wave forecasting: A reanalysis-driven skill assessment in the Chinese marginal seas".JOURNAL OF SEA RESEARCH 210(2026):16.

入库方式: OAI收割

来源:海洋研究所

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