Title :
On-line classification of acoustic burst signals by a neural network application to loose parts monitoring in nuclear power plants
Author :
Olma, B. ; Wach, D.
Author_Institution :
Gesellschaft fur Anlagen- und Reaktorsicherheit, Garching, Germany
Abstract :
Acoustic signature analysis is increasingly being used as a tool for online assessing the mechanical integrity of components in the primary circuit of nuclear power plants. During operation, the acoustic signals of loose parts monitoring system sensors are continuously monitored for signal bursts associated with metallic impacts. With the availability of neural networks new powerful tools for classification and diagnosis of burst signals can be realized online. Since signals of same event type can have similar but diverse signal forms according to their random flow-induced excitation, the characterization potential of neural networks has been used for type classification. A backpropagation neural network based on five precalculated signal parameter values has been set up for identification of three different signal types. In a pilot application at a plant, the acoustic burst signals at a steam generator were automatically monitored, classified and trended. The paper presents the successful results of six weeks online signal classification at the plant
Keywords :
acoustic signal processing; backpropagation; boilers; fault diagnosis; monitoring; neural nets; nuclear power stations; pattern classification; real-time systems; acoustic burst signals; backpropagation; flow-induced excitation; loose parts monitoring; neural network; nuclear power plants; online classification; steam generator; Acoustic signal analysis; Backpropagation; Fault diagnosis; Monitoring; Neural network applications; Nuclear power generation; Pattern classification; Real time systems; Steam generation;
Conference_Titel :
Control Applications, 1994., Proceedings of the Third IEEE Conference on
Conference_Location :
Glasgow
Print_ISBN :
0-7803-1872-2
DOI :
10.1109/CCA.1994.381356