Neural Network Emulation of the Integral Equation Model with Multiple Scattering

The Integral Equation Model with multiple scattering (IEMM) represents a well-established method that provides a theoretical framework for the scattering of electromagnetic waves from rough surfaces. A critical aspect is the long computational time required to run such a complex model. To deal with...

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Main Authors: Luca Pulvirenti, Francesca Ticconi, Nazzareno Pierdicca
Format: Article
Language:English
Published: MDPI AG 2009-10-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/9/10/8109/
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spelling doaj-8dc907021d7c42d9a11a99e0c35216072020-11-24T21:52:49ZengMDPI AGSensors1424-82202009-10-019108109812510.3390/s91008109Neural Network Emulation of the Integral Equation Model with Multiple ScatteringLuca PulvirentiFrancesca TicconiNazzareno PierdiccaThe Integral Equation Model with multiple scattering (IEMM) represents a well-established method that provides a theoretical framework for the scattering of electromagnetic waves from rough surfaces. A critical aspect is the long computational time required to run such a complex model. To deal with this problem, a neural network technique is proposed in this work. In particular, we have adopted neural networks to reproduce the backscattering coefficients predicted by IEMM at L- and C-bands, thus making reference to presently operative satellite radar sensors, i.e., that aboard ERS-2, ASAR on board ENVISAT (C-band), and PALSAR aboard ALOS (L-band). The neural network-based model has been designed for radar observations of both flat and tilted surfaces, in order to make it applicable for hilly terrains too. The assessment of the proposed approach has been carried out by comparing neural network-derived backscattering coefficients with IEMM-derived ones. Different databases with respect to those employed to train the networks have been used for this purpose. The outcomes seem to prove the feasibility of relying on a neural network approach to efficiently and reliably approximate an electromagnetic model of surface scattering. http://www.mdpi.com/1424-8220/9/10/8109/neural networkssurface scatteringradar sensors
collection DOAJ
language English
format Article
sources DOAJ
author Luca Pulvirenti
Francesca Ticconi
Nazzareno Pierdicca
spellingShingle Luca Pulvirenti
Francesca Ticconi
Nazzareno Pierdicca
Neural Network Emulation of the Integral Equation Model with Multiple Scattering
Sensors
neural networks
surface scattering
radar sensors
author_facet Luca Pulvirenti
Francesca Ticconi
Nazzareno Pierdicca
author_sort Luca Pulvirenti
title Neural Network Emulation of the Integral Equation Model with Multiple Scattering
title_short Neural Network Emulation of the Integral Equation Model with Multiple Scattering
title_full Neural Network Emulation of the Integral Equation Model with Multiple Scattering
title_fullStr Neural Network Emulation of the Integral Equation Model with Multiple Scattering
title_full_unstemmed Neural Network Emulation of the Integral Equation Model with Multiple Scattering
title_sort neural network emulation of the integral equation model with multiple scattering
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2009-10-01
description The Integral Equation Model with multiple scattering (IEMM) represents a well-established method that provides a theoretical framework for the scattering of electromagnetic waves from rough surfaces. A critical aspect is the long computational time required to run such a complex model. To deal with this problem, a neural network technique is proposed in this work. In particular, we have adopted neural networks to reproduce the backscattering coefficients predicted by IEMM at L- and C-bands, thus making reference to presently operative satellite radar sensors, i.e., that aboard ERS-2, ASAR on board ENVISAT (C-band), and PALSAR aboard ALOS (L-band). The neural network-based model has been designed for radar observations of both flat and tilted surfaces, in order to make it applicable for hilly terrains too. The assessment of the proposed approach has been carried out by comparing neural network-derived backscattering coefficients with IEMM-derived ones. Different databases with respect to those employed to train the networks have been used for this purpose. The outcomes seem to prove the feasibility of relying on a neural network approach to efficiently and reliably approximate an electromagnetic model of surface scattering.
topic neural networks
surface scattering
radar sensors
url http://www.mdpi.com/1424-8220/9/10/8109/
work_keys_str_mv AT lucapulvirenti neuralnetworkemulationoftheintegralequationmodelwithmultiplescattering
AT francescaticconi neuralnetworkemulationoftheintegralequationmodelwithmultiplescattering
AT nazzarenopierdicca neuralnetworkemulationoftheintegralequationmodelwithmultiplescattering
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