Title of article :
An integrated signal processing and neural networks system for steam generator tubing diagnostics using eddy current inspection
Author/Authors :
Wu، نويسنده , , Yan; Upadhyaya، نويسنده , , Belle R، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1996
Abstract :
The primary purpose of this research was to develop an integrated approach by combining
infonnation compression methods and artificial neural networks for the monitoring of plant components
using nondestructive evaluation (NDE) data. Specifically, data from eddy current inspection of steam
generator tubing were utilized to evaluate this technology. The focus of the research was to develop and
test various data compression methods (for eddy current data) and the perfonnance of different neural
network paradigms for defect classification and defect parameter estimation. Feedforward, fully-connected
neural networks, that use the back-propagation algorithm for network training, were implemented for
defect classification and defect parameter estimation using a modular network architecture. A large eddy
current tube inspection database was acquired from the Metals and Ceramics Division of Oak Ridge
National Laboratory (ORNL). These data were used to study the perfonnance of artificial neural networks
for defect type classification and for estimating defect parameters. Most of the study was made using the
NeuralWorks Professional IIlPlus software. A PC-based data pre-processing and display program was
also developed as part of an expert system for data management and decision making. The results of the
analysis showed that for effective (Iow-error) defect classification and estimation of parameters, it is
necessary to identify proper feature vectors using different data representation methods. The integration
of data compression and artificial neural networks for infonnation processing was established as an
efficient technique for automation of diagnostics using nondestructive evaluation methods
Journal title :
Annals of Nuclear Energy
Journal title :
Annals of Nuclear Energy