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Detailed Reference Information
Féral et al. 2006
Féral, L., Sauvageot, H., Castanet, L., Lemorton, J., Cornet, F. and Leconte, K. (2006). Large-scale modeling of rain fields from a rain cell deterministic model. Radio Science 41: doi: 10.1029/2005RS003312. issn: 0048-6604.

A methodology to simulate two-dimensional rain rate fields at large scale (1000 ¿ 1000 km2, the scale of a satellite telecommunication beam or a terrestrial fixed broadband wireless access network) is proposed. It relies on a rain rate field cellular decomposition. At small scale (~20 ¿ 20 km2), the rain field is split up into its macroscopic components, the rain cells, described by the Hybrid Cell (HYCELL) cellular model. At midscale (~150 ¿ 150 km2), the rain field results from the conglomeration of rain cells modeled by HYCELL. To account for the rain cell spatial distribution at midscale, the latter is modeled by a doubly aggregative isotropic random walk, the optimal parameterization of which is derived from radar observations at midscale. The extension of the simulation area from the midscale to the large scale (1000 ¿ 1000 km2) requires the modeling of the weather frontal area. The latter is first modeled by a Gaussian field with anisotropic covariance function. The Gaussian field is then turned into a binary field, giving the large-scale locations over which it is raining. This transformation requires the definition of the rain occupation rate over large-scale areas. Its probability distribution is determined from observations by the French operational radar network ARAMIS. The coupling with the rain field modeling at midscale is immediate whenever the large-scale field is split up into midscale subareas. The rain field thus generated accounts for the local CDF at each point, defining a structure spatially correlated at small scale, midscale, and large scale. It is then suggested that this approach be used by system designers to evaluate diversity gain, terrestrial path attenuation, or slant path attenuation for different azimuth and elevation angle directions.

BACKGROUND DATA FILES

Abstract

Keywords
Mathematical Geophysics, Stochastic processes (3235, 4468, 4475, 7857), Atmospheric Processes, Precipitation, Atmospheric Processes, Remote sensing, Radio Science, Radio wave propagation
Journal
Radio Science
Publisher
American Geophysical Union
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