A Backscattering Model of Rainfall Over Rough Sea Surface for Synthetic Aperture Radar

IEEE T. Geoscience and Remote Sensing(2015)

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摘要
Spaceborne high-resolution synthetic aperture radar (SAR) is a potential powerful tool for rainfall pattern and intensity observations over the sea surface. However, many interesting rain-related phenomena revealed by SAR images are still not fully understood due to poor theoretical modeling of the rain-wind-wave interactions. This paper attempts to develop a physics-based radiative transfer model to capture the scattering behavior of rainfall over a rough sea surface. Raindrops are modeled as Rayleigh scattering nonspherical particles, whereas the rain-induced rough surface is described by the Log-Gaussian ring-wave spectrum. The model is validated against both empirical models and measurements. A case study of collocated Envisat ASAR data and NEXRAD rain data is presented to demonstrate the performance of the newly developed model. Finally, numerical simulation results suggest that rain-related scattering becomes significant as compared with wind-related scattering when the frequency is above C-band, whereas the raindrop volumetric scattering becomes significant above X-band.
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关键词
rain-wind-wave interactions,log-gaussian ring-wave spectrum,rough sea surface,synthetic aperture radar,rainfall intensity,atmospheric techniques,nexrad rain data,scattering,synthetic aperture radar (sar),raindrop volumetric scattering,x-band,physics-based radiative transfer model,asar data,rainfall pattern,rain,atmospheric waves,c-band,wind,rain-related phenomena,radiative transfer,raindrops,spaceborne high-resolution synthetic aperture radar,numerical simulation,sea surface,rain-related scattering,rain-induced rough surface,radar imaging,rainfall behavior,wind-related scattering,sar images,x band,matrices,rough surfaces,surface roughness,c band
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