AI Article Synopsis

  • The study addresses how variations in sea surface temperature (SST) can affect the accuracy of wind measurements by scatterometers, specifically focusing on the Ku-band scatterometer HY-2A SCAT.
  • It proposes a new correction method that utilizes a neural network (TNNW) to adjust backscatter coefficients, improving wind measurement accuracy without relying on traditional models.
  • Validation results indicate that the corrected wind speeds align better with data from the European Center for Medium-Range Weather Forecasts, demonstrating the method's effectiveness in countering SST impacts on measurements.

Article Abstract

The variation of sea surface temperature (SST) can change the backscatter coefficient measured by a scatterometer, resulting in a decrease in the accuracy of the sea surface wind measurement. This study proposed a new approach to correct the effect of SST on the backscatter coefficient. The method focuses on the Ku-band scatterometer HY-2A SCAT, which is more sensitive to SST than C-band scatterometers, can improve the wind measurement accuracy of the scatterometer without relying on reconstructed geophysical model function (GMF), and is more suitable for operational scatterometers. Through comparisons to WindSat wind data, we found that the Ku-band scatterometer HY-2A SCAT wind speeds are systemically lower under low SST and higher under high SST conditions. We trained a neural network model called the temperature neural network (TNNW) using HY-2A data and WindSat data. TNNW-corrected backscatter coefficients retrieved wind speed with a small systematic deviation from WindSat wind speed. In addition, we also carried out a validation of HY-2A wind and TNNW wind using European Center for Medium-Range Weather Forecasts (ECMWF) reanalysis data as a reference, and the results showed that the retrieved TNNW-corrected backscatter coefficient wind speed is more consistent with ECMWF wind speed, indicating that the method is effective in correcting SST impact on HY-2A scatterometer measurements.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10224118PMC
http://dx.doi.org/10.3390/s23104825DOI Listing

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