Vilibić Ivica, Šepić Jadranka, Mihanović Hrvoje, Kalinić Hrvoje, Cosoli Simone, Janeković Ivica, Žagar Nedjeljka, Jesenko Blaž, Tudor Martina, Dadić Vlado, Ivanković Damir
Institute of Oceanography and Fisheries, Šetalište I. Meštrovića 63, 21000 Split, Croatia.
University of Split, Faculty of Science, Teslina 12, 21000 Split, Croatia.
Sci Rep. 2016 Mar 16;6:22924. doi: 10.1038/srep22924.
An ocean surface currents forecasting system, based on a Self-Organizing Maps (SOM) neural network algorithm, high-frequency (HF) ocean radar measurements and numerical weather prediction (NWP) products, has been developed for a coastal area of the northern Adriatic and compared with operational ROMS-derived surface currents. The two systems differ significantly in architecture and algorithms, being based on either unsupervised learning techniques or ocean physics. To compare performance of the two methods, their forecasting skills were tested on independent datasets. The SOM-based forecasting system has a slightly better forecasting skill, especially during strong wind conditions, with potential for further improvement when data sets of higher quality and longer duration are used for training.
基于自组织映射(SOM)神经网络算法、高频(HF)海洋雷达测量数据和数值天气预报(NWP)产品,开发了一种亚得里亚海北部沿海地区的海面洋流预测系统,并将其与基于ROMS模型得出的业务化海面洋流进行了比较。这两种系统在架构和算法上有显著差异,分别基于无监督学习技术或海洋物理学。为比较这两种方法的性能,在独立数据集上测试了它们的预测技能。基于SOM的预测系统具有稍好的预测技能,尤其是在强风条件下,当使用更高质量和更长时间段的数据集进行训练时,还有进一步改进的潜力。