Generalized Snell's laws for rough interfaces
Christophe Gomez (I2M), Knut S{\o}lna (UC Irvine)

TL;DR
This paper analyzes wave reflection and transmission at rough interfaces, deriving generalized Snell's laws and characterizing the resulting speckle patterns and their statistical properties.
Contribution
It introduces a rigorous asymptotic framework for wave scattering at rough interfaces, deriving generalized Snell's laws and statistical models for speckle patterns.
Findings
Specular and speckle components are characterized for different correlation lengths.
Effective flat interface approximation is valid in certain regimes.
Speckle patterns are modeled as Gaussian random fields with known correlations.
Abstract
In this paper, we consider the reflection and transmission problem of waves by a rapidly oscillating rough interface that exhibits general mixing properties. Using an asymptotic analysis based on a separation of scales, corresponding to a paraxial (parabolic) scaling regime, we precisely characterize the specular and speckle (diffusive) components of the reflected and transmitted fields. A critically scaled interface is considered, in the sense that the amplitudes of the interface fluctuations and the central wavelength are of the same order. When the correlation length of the interface fluctuations is of the same order as the beam width, random specular components arise in both the reflected and transmitted waves, while no speckle component is observed. Equivalently, the reflected and transmitted fields are essentially confined to the cones formed by the specular components (specular…
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Taxonomy
TopicsRandom lasers and scattering media · Advanced Mathematical Modeling in Engineering · Electromagnetic Scattering and Analysis
