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Bayesian Algorithm for Rain Detection in Ku-Band Scatterometer Data

Zhao, K., A. Stoffelen, J. Verspeek, A. Verhoef and C. Zhao

Ku-band scatterometers are sensitive to rain effects due to their centimeter-scale radar wavelength. The NSCAT-4DS geophysical model function (GMF) corrects for sea surface temperature (SST), whereas it does not consider rain. Rain causes biases in the retrieved wind fields, and to prevent these, quality control (QC) flags play an important role in rain identification. Since horizontal polarization and vertical polarization radar beams have a particular sensitivity to rain clouds, a noticeable difference between the rain-dominated backscatter distribution and the wind-dominated backscatter distribution is observed. Employing a Bayesian approach and exploiting these particular wind and rain backscatter characteristics, we propose an algorithm to provide the posterior rain probability for each measurement in a wind vector cell and test the method for the Haiyang-2C scatterometer. In a comprehensive comparison between posterior rain probability, Royal Netherlands Meteorological Institute (KNMI) QC flag, and Joss flag, for posterior rain probabilities higher than 0.5, the rejection rate is approximately a quarter of that of the KNMI QC flag with better rain detection behavior. While the Joss flag, the difference between the retrieved wind speed and the 2-D variational ambiguity removal analysis wind speed, has the best performance in identifying rain in the sweet swath, it comes at the cost of a higher missing rate. The comparison with advanced scatterometer (ASCAT) winds also proves the method’s effectiveness. Posterior rain probability has the best rain identification ability in the nadir swath. A combination of different QC flags should be beneficial and applied in wind retrieval.

Bibliografische gegevens

Zhao, K., A. Stoffelen, J. Verspeek, A. Verhoef and C. Zhao. Bayesian Algorithm for Rain Detection in Ku-Band Scatterometer Data
Journal: IEEE Transactions on Geoscience and Remote Sensing, Volume: 61, Year: 2023, doi: 10.1109/TGRS.2023.3264245

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