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IEEE Transactions on Antennas and Propagation
Volume 48 Number 9, September 2000

Table of Contents for this issue

Complete paper in PDF format

Detection of Buried Dielectric Cavities Using the Finite-Difference Time-Domain Method in Conjunction with Signal Processing Techniques

Ji-Fu Ma, Wen Hua Yu, Senior Member, IEEE and Raj Mittra Life Fellow, IEEE

Page 1289.

Abstract:

In this paper, we address the problem of detecting low-dielectric contrast cavities buried deep in lossy ground by using the finite-difference time-domain (FDTD) method in conjunction with signal processing techniques for extrapolation and object identification. It is well known that very low frequency probing is needed for deep penetration into the lossy ground, owing to a rapid decay of electromagnetic (EM) waves at higher frequencies. It is also recognized that numerical modeling using the FDTD method becomes very difficult, if not impossible, when the operating frequency becomes as low as 1 Hz. To circumvent this difficulty, we propose a hybrid approach in this paper that combines the FDTD method with signal processing techniques, e.g.,rational function approximation and neural networks (NNs). Apart from the forward problem of modeling buried cavities, we also study the inverse scattering problem-that of estimating the depth of a buried object from the measured field values at the surface of the earth or above. Numerical results for a buried prism are given to illustrate the application of the proposed technique.

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