Title of article :
A Computational Intelligence Approach to Solve the Inverse Problem of Electrical DC Resistivity Sounding
Author/Authors :
Wahid, H. Universiti Teknologi Malaysia - Faculty of Electrical Engineering, Malaysia , Ahmad, A. Universiti Teknologi Malaysia - Faculty of Electrical Engineering, Malaysia
From page :
115
To page :
129
Abstract :
Electrical methods have been widely used in geophysical surveying to obtain high-resolution information about subsurface conditions, since the last few decades. Resistivity is an important parameter in judging the ground properties, especially detecting buried objects of anomalous conductivity. Electrical DC (i.e. Direct Current) resistivity sounding is the commonly used technique to obtain the apparent 2-D resistivity of the region under investigation. Acquiring the true resistivity from collected data remains a complex task due to nonlinearity particularly due to contrasts distributed in the region. In this work, a radial basis function neural network (RBFNN) metamodelling approach is proposed to solve the 2-D resistivity inverse problem. The model was trained with synthetic data samples obtained for a homogeneous medium of 100Ω.m. The neural network was then tested on another set of synthetic data. The results show the ability of the proposed approach to estimate the true resistivity from the 2-D apparent resistivity sounding data with high correlation. The proposed technique, when executed, appears to be computationally-efficient, as it requires less processing time and produces less error than conventional method.
Keywords :
DC resistivity sounding , 2 , D resistivity , inversion problem , radial basis function , neural network , metamodelling
Journal title :
Jurnal Teknologi :F
Journal title :
Jurnal Teknologi :F
Record number :
2716666
Link To Document :
بازگشت