A Deep Learning methodology based on ResNet, recently developed to retrieve the wind direction exclusively from the SAR images at 500 m of resolution, produces wind fields with unprecedented spatial details. As a consequence, the classical validation method comparing the SAR-derived with model and in-situ winds is not sufficient because of the natural lack of small scale structures provided by the models and the limited spatial coverage of the in-situ data. This paper proposes a complementary approach to the classical validation, estimating the spatial gradients of SAR-derived wind direction ? and speed U and verifying their compatibility with the typical values obtained from experimental wind time series. Hence getting a consistency test of the spatial information of the SAR-derived wind fields obtained with the ResNet methodology. This analysis on five Sentinel-1 images over the northern Adriatic Sea shows a good compatibility of the local spatial variations of the ResNet SAR-derived wind fields with those derived from experimental time series. These results, together with the statistical agreement with model and in-situ data sets, enforce the reliability of the wind maps obtained with the ResNet methodology, which describe real features of the wind fields.
Validation of high resolution SAR winds fields obtained by Deep Learning
Zecchetto;
2022
Abstract
A Deep Learning methodology based on ResNet, recently developed to retrieve the wind direction exclusively from the SAR images at 500 m of resolution, produces wind fields with unprecedented spatial details. As a consequence, the classical validation method comparing the SAR-derived with model and in-situ winds is not sufficient because of the natural lack of small scale structures provided by the models and the limited spatial coverage of the in-situ data. This paper proposes a complementary approach to the classical validation, estimating the spatial gradients of SAR-derived wind direction ? and speed U and verifying their compatibility with the typical values obtained from experimental wind time series. Hence getting a consistency test of the spatial information of the SAR-derived wind fields obtained with the ResNet methodology. This analysis on five Sentinel-1 images over the northern Adriatic Sea shows a good compatibility of the local spatial variations of the ResNet SAR-derived wind fields with those derived from experimental time series. These results, together with the statistical agreement with model and in-situ data sets, enforce the reliability of the wind maps obtained with the ResNet methodology, which describe real features of the wind fields.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


