4.4 Article

Multi Population Genetic Algorithm to estimate snow properties from GPR data

Journal

JOURNAL OF APPLIED GEOPHYSICS
Volume 131, Issue -, Pages 133-144

Publisher

ELSEVIER
DOI: 10.1016/j.jappgeo.2016.05.015

Keywords

Distributed Genetic Algorithm; Sub-population; Migration; Variable off-set radar data; Snow properties

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Multi-population genetic algorithms (DGA or MGA) are based on the partition of the population into several semi-isolated subpopulations (demes). Each sub-population is associated to an independent GA and explores different promising regions of the search space. We evaluate the sensitivity of some parameters to solve a non-linear problem in georadar data analysis. Particularly, we adapt the DGAs to optimize the model parameters of a data set of variable-offset data, collected in variable offset modality with Ground Penetrating Radar, to estimate porosity, saturation and density of snowpack in a glacial environment. The data set comes from investigation on glaciers to estimate the thickness and density of the seasonal snow. The main strategies to select the best parameters of the optimization process are outlined. We analyze the sensitivity on the solution of the optimization problems of some parameters of DGA; we deal with the effects of population and sub-population, and mutation properties. We consider the reflection traveltimes in a layered medium including a relationship between the traveltimes, porosity and saturation of the snow. We solve the problem for the layer thickness and the porosity, saturation and structural exponent of the snow. Reliable results are obtained in the snow density estimating, while the evaluation of free water content into the snow still remains challenging. (C) 2016 Elsevier B.V. All rights reserved.

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