This paper describes some preliminary steps to improve the coastal winds retrieved from the Seawinds scatterometer on-board the QuikSCAT satellite platform. In particular, it describes a method for estimating the slice Normalized Radar Cross Section (sigma-{0}) noise. Moreover, it shows a simple method for selecting the best-suited sigma-{0} domain to implement a Land Contribution Ratio (LCR) based sigma-{0} correction scheme. The preliminary results suggest that there are some non-negligible differences between the open sea and the 'every kind of surface' noise characteristics, even if such differences are not reported in the QuikSCAT files. The intra-egg sigma-{0} biases may amount to approximately ±0.6 dB for H-Pol acquisitions and half that for V-Pol, but the impact on the noise estimation amounts to less than 2%. Finally, the LCR-based sigma-{0} correction scheme is now being tested and developed in the linear domain.

Improving the Quikscat Derived Winds Near the Coast

Grieco G.
;
2022

Abstract

This paper describes some preliminary steps to improve the coastal winds retrieved from the Seawinds scatterometer on-board the QuikSCAT satellite platform. In particular, it describes a method for estimating the slice Normalized Radar Cross Section (sigma-{0}) noise. Moreover, it shows a simple method for selecting the best-suited sigma-{0} domain to implement a Land Contribution Ratio (LCR) based sigma-{0} correction scheme. The preliminary results suggest that there are some non-negligible differences between the open sea and the 'every kind of surface' noise characteristics, even if such differences are not reported in the QuikSCAT files. The intra-egg sigma-{0} biases may amount to approximately ±0.6 dB for H-Pol acquisitions and half that for V-Pol, but the impact on the noise estimation amounts to less than 2%. Finally, the LCR-based sigma-{0} correction scheme is now being tested and developed in the linear domain.
2022
Istituto di Scienze Marine - ISMAR - Sede Secondaria Napoli
978-1-6654-2792-0
Coastal winds
Land Contribution Ratio
Normalized Radar Cross Section noise
QuikSCAT
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/467349
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