| Literature DB >> 26979129 |
Ivica Vilibić1, Jadranka Šepić1, Hrvoje Mihanović1, Hrvoje Kalinić1,2, Simone Cosoli3,4, Ivica Janeković4,5, Nedjeljka Žagar6, Blaž Jesenko6, Martina Tudor7, Vlado Dadić1, Damir Ivanković1.
Abstract
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.Entities:
Year: 2016 PMID: 26979129 PMCID: PMC4793242 DOI: 10.1038/srep22924
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1(a) The domain of the SOM-based operational forecasting system in the northern Adriatic with marked HF radar stations (BIB – Bibione, AUR – Aurisina, SAV – Savudrija, ZUB – Zub). Operational coverage of hourly surface currents over the predefined Cartesian grid during testing periods is given in percent, while spatial coverage of the Aladin/HR model used for training and forecasting is denoted by the red rectangle. Operational coverage at the same Cartesian grid during testing period was higher than 60%. (b) HF radar operability between 2007 and 2010 with marked training (blue rectangle) and testing (red rectangles) periods. The figure has been created using MATLAB (www.mathworks.com) and CorelDRAW (www.corel.com) software.
Figure 2The architecture of the SOM-based operational forecasting system.
The figure has been created using CorelDRAW (www.corel.com) software.
Figure 3Distribution of root-mean-square error (RMSE) between SOM- and ROMS-derived forecast of surface currents and the respective measurements per BMU and for three testing periods.
Percentage of situations ascribed to a particular BMU is also shown. The figure has been created using MATLAB (www.mathworks.com) software.
Figure 4Surface currents obtained by the SOM-based forecasting system, the respective average surface currents obtained by ROMS forecasting system, and the RMSE between SOM-based and ROMS-based forecast of surface currents and the measurements, computed for (a) BMU16 (associated with strong bora wind), and (b) BMU20 (associated with sirocco wind). Encircled area includes grid points with at least 60% operational coverage during the testing period. The figure has been created using MATLAB (www.mathworks.com) software.