Data di Pubblicazione:
2004
Abstract:
A research has been carried out finalized to the definition of a methodology useful for the diagnosis and prediction of the correct evolution state of physical systems. In this paper we present a related model and a specific network topology for the considered problem. In particular, the prediction procedure is based on a 'Self Organizing Map'(SOM) and an 'Error Back-Propagation'(EBP) networks combined to form a hierarchical architecture. The network system has been developed and tested using data furnished by Alenia and consisting in sensorial data (FBG, Fiber Bragg Grating) and multi-format descriptive data regarding evaluation (SB). The obtained results have shown that the developed methodology is a promising tool for the diagnosis activity.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Artificial Neural Networks; Self-Organising Maps; Prediction Systems; Life Cycle Monitoring
Elenco autori:
DI BONO, MARIA GRAZIA; Pieri, Gabriele; Salvetti, Ovidio
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