DocumentCode :
3611150
Title :
Learning-Based Emulation of Sea Surface Wind Fields From Numerical Model Outputs and SAR Data
Author :
Liyun He ; Fablet, Ronan ; Chapron, Bertrand ; Tournadre, Jean
Author_Institution :
Lab. of Oceanogr. from Space, Ifremer, Plouzane, France
Volume :
8
Issue :
10
fYear :
2015
Firstpage :
4742
Lastpage :
4750
Abstract :
The availability of sea surface wind conditions with a high-resolution (HR) space-time sampling is a critical issue for a wide range of applications. Currently, no observation systems nor model forecasts provide relevant information with a high sampling rate in both space and time. Synthetic aperture radar (SAR) satellite systems deliver HR sea surface fields, with a spatial resolution below 0.01°, but they are also characterized by a large revisit time up 7 to 10 days for temperate zones. Meanwhile, operational model predictions typically involve a high temporal resolution (e.g., every 6 h), but also a low spatial resolution (0.5°). With a view to leveraging both data sources, we investigate statistical downscaling schemes. In this study, a new model based on a machine learning method, namely support vector regression (SVR), is built to reconstruct HR sea surface wind fields from low-resolution operational model forecasts. The considered case study off Norway demonstrates the relevance of the proposed SVR model. It outperforms state-of-the-art approaches [namely, linear, analog, and empirical orthogonal function (EOF) downscaling models] in terms of mean square error. It also realistically reproduces complex space-time variabilities of the observed SAR wind fields. We further discuss the SVR model as a generalization of the popular linear and analog models.
Keywords :
numerical analysis; regression analysis; remote sensing by radar; synthetic aperture radar; wind; Norway; SAR data; data source; empirical orthogonal function; high-resolution space-time sampling; machine learning method; numerical model; sea surface wind condition; sea surface wind field learning-based emulation; statistical downscaling scheme; support vector regression; synthetic aperture radar satellite system; temperate zone; time 7 day to 10 day; Machine learning; Numerical models; Predictive models; Sea surface; Support vector machines; Synthetic aperture radar; Wind forecasting; Coastal wind; downscaling; high resolution (HR); machine learning; support vector regression (SVR);
fLanguage :
English
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher :
ieee
ISSN :
1939-1404
Type :
jour
DOI :
10.1109/JSTARS.2015.2496503
Filename :
7335566
Link To Document :
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