Title :
Wavelet decomposition and radial basis function networks for system monitoring
Author :
Ikonomopoulos, Andreas ; Endou, Akira
Author_Institution :
Nucl. Cycle Dev. Inst., Fukui, Japan
fDate :
10/1/1998 12:00:00 AM
Abstract :
Two approaches are coupled to develop a novel collection of black box models for monitoring operational parameters in a complex system. The idea springs from the intention of obtaining multiple predictions for each system variable and fusing them before they are used to validate the actual measurement. The proposed architecture pairs the analytical abilities of the discrete wavelet decomposition with the computational power of radial basis function networks. Members of a wavelet family are constructed in a systematic way and chosen through a statistical selection criterion that optimizes the structure of the network. Network parameters are further optimized through a quasi-Newton algorithm. The methodology is demonstrated utilizing data obtained during two transients of the Monju fast breeder reactor. The models developed are benchmarked with respect to similar regressors based on Gaussian basis functions
Keywords :
feedforward neural nets; fission reactor monitoring; fission reactor theory; nuclear engineering computing; wavelet transforms; FBR; Gaussian basis functions; Monju; black box models; fast breeder reactor; operational parameters; quasi-Newton algorithm; radial basis function networks; system monitoring; wavelet decomposition; Artificial neural networks; Computer networks; Condition monitoring; Discrete wavelet transforms; Inductors; Multilayer perceptrons; Neural networks; Parameter estimation; Radial basis function networks; Wavelet analysis;
Journal_Title :
Nuclear Science, IEEE Transactions on