Title :
A neural network approach for the reduction of the dimensionality of slowly time-varying electromagnetic inverse problems
Author :
Morabito, F.C. ; Coccorese, E.
Author_Institution :
Dept. of Electron. Eng. & Appl. Math., Calabria Univ., Italy
fDate :
5/1/1996 12:00:00 AM
Abstract :
In real electromagnetic problems, it is often required to rapidly interpret a lot of experimental raw data provided by a set of sensors with the aim of controlling the time evolution of a system under observation. This is the case, for example, of the real time control of a plasma discharge in a tokamak device for nuclear fusion experiments. Some procedures apt to carry out principal component analysis (PCA) by using suitable artificial neural network (ANN) models are presented. The related models allow one to adaptively extract the PCs directly from the input data without estimating in advance the covariance matrix over the sample database. The proposed architectures may also cope with non-stationary problems. Two examples of application in electromagnetics are presented which concern respectively the reduction of dimensionality in a typical identification problem and the adaptive recovery of the PCs during a slow change of the statistics of the simulated experiment
Keywords :
Tokamak devices; electromagnetism; fusion reactor operation; inverse problems; multilayer perceptrons; neural net architecture; nuclear engineering computing; physics; statistical analysis; ANN models; artificial neural network; covariance matrix; dimensionality reduction; electromagnetics; identification problem; input data; multilayer neural network; neural network; neural network architecture; nonstationary problems; principal component analysis; sample database; simulated experiment statistics; slowly time-varying electromagnetic inverse problems; Artificial neural networks; Control systems; Data mining; Fusion reactors; Neural networks; Personal communication networks; Plasma devices; Principal component analysis; Sensor systems; Tokamak devices;
Journal_Title :
Magnetics, IEEE Transactions on