Georg Heiler
Georg Heiler
Home
Blog
Publications
Projects
Lecturing
Talks
Contact
Light
Dark
Automatic
HFC
AI basierte Root Cause Analyse von CPD Störquellen in Docsis Netzen
Good quality network connectivity is ever more important. For hybrid fiber coaxial (HFC) networks, searching for upstream \emph{high noise} in the past was cumbersome and time-consuming. Even with machine learning due to the heterogeneity of the network and its topological structure, the task remains challenging. We present the automation of a simple business rule (largest change of a specific value) and compare its performance with state-of-the-art machine-learning methods and conclude that the precision@1 can be improved by 2.3 times. As it is best when a fault does not occur in the first place, we secondly evaluate multiple approaches to forecast network faults, which would allow performing predictive maintenance on the network.
May 10, 2022 12:00 AM — May 12, 2022 12:00 AM
Georg Heiler
PDF
Slides
Identifying the root cause of cable network problems with machine learning
Good quality network connectivity is ever more important. For hybrid fiber coaxial (HFC) networks, searching for upstream high noise in …
Georg Heiler
,
Thassilo Gadermaier
,
Thomas Haider
,
Allan Hanbury
,
Peter Filzmoser
Preprint
Cite
Cite
×