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Comparison of GNSS-R Delay Doppler Map Processing Algorithms

IGARSS(2024)

Daaxa LLC Engineering and Scientific Consulting

Cited 0|Views5
Abstract
There are several established algorithms for processing Global Navigation Satellite System Reflected (GNSS-R) signals. The goal of these techniques is to generate delay Doppler maps (DDMs) of the magnitude distribution of the reflected/scattered signal power over the surface. The resulting DDMs are then used to estimate geophysical surface parameters such as ocean surface wind speed or near surface soil moisture. Each of these techniques have their unique application specific advantages and disadvantages. This presentation will present three of the most common GNSS-R DDM processing algorithms and compare them from the perspective of signal quality and calculation efficiency, and make recommendations for their suitability for various remote sensing applications and instrument design considerations.
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Key words
GPS,GNSS,Reflectometry,Bistatic Radar
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