Title :
Using statistics and neural networks in fault determination
Author :
Schoorl, André P. ; Kourounakis, Nicolaos P. ; Somers, C.D.A. ; Dimopoulos, N.J.
Author_Institution :
Dept. of Electr. & Comput. Eng., Victoria Univ., BC, Canada
Abstract :
Large-scale fault detection in cable television amplifier networks is considered. The status monitoring information measured in these networks is affected by noise, temperature, and other external elements making closed-form solutions impractical. Existing techniques utilizing recurrent neural networks have been developed to analyze and reliably detect faults in such a system. However, due to changes in amplifier behaviour such neural networks often need to be retrained, introducing significant computational expense when used on a large data set. To solve this problem a technique is needed to quickly scan through data for such a system and only pass questionable amplifiers on to more time consuming and rigorous routines. This work presents a means by which statistics and feed-forward neural networks can be used to categorize the forward pilot signal to make implementation of a large-scale model-based fault detection system feasible.
Keywords :
amplifiers; cable television; fault location; feedforward neural nets; repeaters; telecommunication computing; telecommunication network reliability; amplifier behaviour; cable television amplifier networks; fault determination; feed-forward neural networks; forward pilot signal; large-scale fault detection; large-scale model-based fault detection system; statistics; status monitoring information; Cable TV; Closed-form solution; Fault detection; Large-scale systems; Monitoring; Neural networks; Noise measurement; Recurrent neural networks; Statistics; Temperature;
Conference_Titel :
Electrical and Computer Engineering, 1999 IEEE Canadian Conference on
Conference_Location :
Edmonton, Alberta, Canada
Print_ISBN :
0-7803-5579-2
DOI :
10.1109/CCECE.1999.808183