Title :
Electromagnetic inverse scattering using neural networks
Author :
Kaufman, J.J. ; Bianco, Bruno ; Zhou, Ying ; Chiabrera, Alesisandro
Author_Institution :
Mount Sinai Sch. of Med., New York, NY, USA
Abstract :
A computer simulation study was carried out on the application of neural networks to a specific electromagnetic (EMF) inverse scattering problem. Small dielectric spheres (radius=1 mm) ranging in relative permittivity from 2 to 100 were individually exposed to a transverse electromagnetic (TEM) plane wave. The spheres´ centers were located in the x-y plane, with 0⩽x,y⩽1 cm. A sensor grid with 25 “point” sensors sampled the EMF scattered by each sphere. The EMF data was evaluated at a frequency of 1 MHz, using a dipole approximation. A principal components analysis was applied to the EMF data to derive a feature vector with 4 components, which were input to a feedforward neural network with one 15 unit hidden layer and 3 outputs, for training. The 3 desired outputs were the x and y coordinates of the sphere center and the relative dielectric permittivity of the sphere, respectively. For an independent EMF (testing) data set, the resulting, root mean-square (RMS) errors were quite small, being 0.03 mm, 0.05 mm, and 1, for the x- and y-sphere center and sphere permittivity estimates, respectively. The results of this study demonstrate the neural networks may be useful in the solution of inverse scattering problems
Keywords :
digital simulation; electrical engineering computing; electromagnetic wave scattering; feedforward neural nets; inverse problems; learning (artificial intelligence); permittivity; physics computing; 1 MHz; computer simulation; dipole approximation; electromagnetic inverse scattering; feature vector; feedforward neural network; hidden layer; neural networks; point sensors; principal components analysis; relative permittivity; root mean-square errors; sensor grid; small dielectric spheres; sphere center coordinates; training; transverse electromagnetic plane wave; Application software; Computer simulation; Dielectrics; Electromagnetic scattering; Feedforward neural networks; Frequency; Inverse problems; Neural networks; Permittivity; Principal component analysis;
Conference_Titel :
Engineering in Medicine and Biology Society, 1995., IEEE 17th Annual Conference
Conference_Location :
Montreal, Que.
Print_ISBN :
0-7803-2475-7
DOI :
10.1109/IEMBS.1995.575390