物理
变压器
风浪模型
自相关
杠杆(统计)
风浪
导线
气象学
人工神经网络
风速
外推法
边值问题
波浪模型
天气研究与预报模式
表面波
领域(数学)
粒度
时间分辨率
空间分析
遥感
空间相关性
离散化
数值模型
可预测性
地球物理学
波传播
深水
作者
Weikai Tan,Chaoxia Yuan,Sudong Xu,Yuan Xu,Alessandro Stocchino
出处
期刊:Physics of Fluids
[American Institute of Physics]
日期:2025-03-01
卷期号:37 (3)
被引量:2
摘要
Short-term predictions of regional wind waves are crucial for coastal and ocean engineering. In this study, we introduce a novel Swin-Transformer-based model, named ST-RWP (Swin Transformer for Regional Wave Prediction), designed to leverage the spatiotemporal relationships of wind velocities and significant wave heights. The model considers inductive bias to capture both local and global dependencies via Convolution and Swin Transformer layers, enabling accurate short-term wave field predictions on unseen data. A rolled-out prediction scheme is employed to extend the forecast horizon efficiently. Trained on the reanalysis dataset offered by European Center for Medium-Range Weather Forecasts, ST-RWP demonstrates excellent performance in predicting wave fields with lead times of 6 and 12 h. However, the model's accuracy degrades when the lead time exceeds 24 h, primarily due to the limited spatial information available at boundary nodes and the low autocorrelation value for such large time span. The dataset exhibits strong spatial and temporal correlations, which are key to the model's success. Our findings indicate that ST-RWP offers an efficient tool for real-time wave field nowcasting, representing a significant advancement in the application of Transformer-based deep neural networks to wave prediction.
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