图像分辨率
遥感
环境科学
时间分辨率
风速
气象学
高分辨率
地质学
气候学
计算机科学
海洋学
地理
人工智能
量子力学
物理
作者
Menglong Li,Yonghong Hou,Xiaowei Song,Chunping Hou,Zhipeng Wang,Zixiang Xiong,Dan Ma
标识
DOI:10.1109/tgrs.2024.3369640
摘要
Obtaining global ocean surface wind speed data with high temporal resolution and spatial coverage is a challenging task. Due to the lack of widely applicable direct measurement methods and algorithms, current research and data products can only achieve good performance in a small spatial range or at low temporal resolution. In this article, a generative adversarial network with Transformer structure called Wind Speed Prediction Transformer-GAN(WSPTGAN) is proposed to generate wind speed data with good spatial coverage and high temporal resolution for areas. The WSPTGAN is trained with the proposed image-like wind speed data combined partial missing dataset, which is combined of fifth generation of the European Center for Medium-Range Weather Forecast reanalysis data and advanced scatterometer data from Meteorological Operational satellites. Thanks to the Defective Data Learning Mechanism, Sequential-wise Multi-head Self-attention Mechanism and Sequence Feature Adaptive Verification Mechanism in the proposed algorithm, the obtained model has good wind speed prediction accuracy with root mean square error of 0.8984 m/s and can achieve multi-step 10-minute wind speed data generation within the global ocean. After comparison with five state-of-the-art prediction models, it is confirmed that the algorithm in this article is able to make better use of the defective data for learning and prediction of wind field trends in global ocean regions.
科研通智能强力驱动
Strongly Powered by AbleSci AI