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Quantitative Inversion of Multiantenna Ground-Penetrating Radar Data with Modeling Error Correction Based on Long Short-Term Memory Cells
by
Randazzo, Andrea
, Fedeli, Alessandro
, Schenone, Valentina
in
Antennas
/ Approximation
/ Dielectric properties
/ dielectrics
/ Dimensional measurement
/ doors
/ electromagnetic field
/ environment
/ Error correction
/ Error correction & detection
/ Finite difference time domain method
/ Ground penetrating radar
/ Inverse scattering
/ Long short-term memory
/ lymphocytes
/ Memory cells
/ Neural networks
/ quantitative imaging
/ Radar data
/ remote sensing
/ sampling
/ solutions
/ testing
2024
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Quantitative Inversion of Multiantenna Ground-Penetrating Radar Data with Modeling Error Correction Based on Long Short-Term Memory Cells
by
Randazzo, Andrea
, Fedeli, Alessandro
, Schenone, Valentina
in
Antennas
/ Approximation
/ Dielectric properties
/ dielectrics
/ Dimensional measurement
/ doors
/ electromagnetic field
/ environment
/ Error correction
/ Error correction & detection
/ Finite difference time domain method
/ Ground penetrating radar
/ Inverse scattering
/ Long short-term memory
/ lymphocytes
/ Memory cells
/ Neural networks
/ quantitative imaging
/ Radar data
/ remote sensing
/ sampling
/ solutions
/ testing
2024
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
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Quantitative Inversion of Multiantenna Ground-Penetrating Radar Data with Modeling Error Correction Based on Long Short-Term Memory Cells
by
Randazzo, Andrea
, Fedeli, Alessandro
, Schenone, Valentina
in
Antennas
/ Approximation
/ Dielectric properties
/ dielectrics
/ Dimensional measurement
/ doors
/ electromagnetic field
/ environment
/ Error correction
/ Error correction & detection
/ Finite difference time domain method
/ Ground penetrating radar
/ Inverse scattering
/ Long short-term memory
/ lymphocytes
/ Memory cells
/ Neural networks
/ quantitative imaging
/ Radar data
/ remote sensing
/ sampling
/ solutions
/ testing
2024
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Quantitative Inversion of Multiantenna Ground-Penetrating Radar Data with Modeling Error Correction Based on Long Short-Term Memory Cells
Journal Article
Quantitative Inversion of Multiantenna Ground-Penetrating Radar Data with Modeling Error Correction Based on Long Short-Term Memory Cells
2024
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Overview
Quantitative inversion of GPR data opens the door to precise characterization of underground environments. However, in order to make the inverse scattering problem solution easier from a computational viewpoint, simplifying assumptions are often applied, i.e., two-dimensional approximations or the consideration of idealized field probes and electromagnetic sources. These assumptions usually produce modeling errors, which can degrade the dielectric reconstruction results considerably. In this article, a processing step based on long short-term memory cells is proposed for the first time to correct the modeling error in a multiantenna GPR setting. In particular, time-domain GPR data are fed into a neural network trained with couples of finite-difference time-domain simulations, where a set of sample targets are simulated in both realistic and idealized configurations. Once trained, the neural network outputs an approximation of multiantenna GPR data as they are collected by an ideal two-dimensional measurement setup. The inversion of the processed data is then accomplished by means of a regularizing Newton-based nonlinear scheme with variable exponent Lebesgue space formulation. A numerical study has been conducted to assess the capabilities of the proposed inversion methodology. The results indicate the possibility of effectively compensating for modeling error in the considered test cases.
Publisher
MDPI AG
Subject
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