DocumentCode :
2076818
Title :
Using machine learning to monitor network performance
Author :
Sasisekharan, Raguram ; Seshadri, V. ; Weiss, Sholom M.
Author_Institution :
AT&T Bell Labs., Middletown, NJ, USA
fYear :
1994
fDate :
1-4 Mar 1994
Firstpage :
92
Lastpage :
98
Abstract :
We describe a new approach, using machine learning, to automate performance monitoring in massively interconnected communications networks. The information obtained from monitoring network performance over time can be used to maintain the network preactively by detecting and predicting chronic failures and identifying potentially serious problems in the early stages before they degrade. We have applied this machine learning approach to the detection and prediction of chronic transmission faults in AT&T´s digital communications network. A windowing technique was applied to large volumes of diagnostic data, and these data were analyzed and decision rules were induced. A set of conditions has been found that is highly predictive of chronic circuit problems. Through continuous monitoring of the network at regular intervals using the new approach, we have also been able to identify several local network trends of specific chronic problems while they were in progress
Keywords :
knowledge based systems; learning (artificial intelligence); performance evaluation; telecommunication network management; AT&T; chronic failures; decision rules; diagnostic data; digital communications network; intelligent systems; machine learning; massively interconnected communications networks; network performance; performance monitoring; windowing technique; Circuit faults; Communication networks; Computerized monitoring; Condition monitoring; Degradation; Digital communication; Electrical fault detection; Fault detection; Integrated circuit interconnections; Machine learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Artificial Intelligence for Applications, 1994., Proceedings of the Tenth Conference on
Conference_Location :
San Antonia, TX
Print_ISBN :
0-8186-5550-X
Type :
conf
DOI :
10.1109/CAIA.1994.323687
Filename :
323687
Link To Document :
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