Title of article :
Using a combination of genetic algorithm and particle swarm optimization algorithm for GEMTIP modeling of spectral-induced polarization data
Author/Authors :
Arab Amiri, A.R Faculty of Mining - Petroleum & Geophysics Engineering - Shahrood University of Technology - Shahrood, Iran , Sharifi, F , Kamkar Rouhani, A
Abstract :
The generalized effective-medium theory of induced polarization (GEMTIP) is a newly
developed relaxation model that incorporates the petro-physical and structural
characteristics of polarizable rocks in the grain/porous scale to model their complex
resistivity/conductivity spectra. The inversion of the GEMTIP relaxation model
parameter from spectral-induced polarization data is a challenging issue because of the
highly non-linear dependency of the observed data on the model parameter and
non-uniqueness of the problem. To solve these problems as well as scape the local
minima of the highly complicated cost function, the genetic algorithm (GA) can be
applied but it has proven to be time-intensive computationally. However, this drawback
can be resolved by incorporating a faster algorithm, e.g. particle swarm optimization
(PSO). The aim of this work is to investigate whether recovering the model parameter of
the ellipsoidal GEMTIP model from SIP data using the combined GA and PSO
algorithms is possible. To achieve this aim, we set the best calculated individuals using
GA as the search space of PSO, and then the best location achieved by PSO in each
iteration is assigned as the updated model parameters. The results of our research work
reveal that the model parameters can effectively be recovered using the approach
proposed in this paper but the time constant of a noisy data that arises from the adverse
dependency of this parameter on the ellipticity of a polarizable grain. Moreover, the
execution time of the ellipsoidal GEMTIP modeling of complex resistivity data can be
significantly improved using the proposed algorithm.
Keywords :
Spectral-Induced Polarization , Particle Swarm Optimization , Genetic Algorithm , Generalized Effective- Medium Theory of Induced Polarization
Journal title :
Astroparticle Physics