4.7 Article

Machine Learning-Based Network Status Detection and Fault Localization

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIM.2021.3094223

Keywords

Fault localization; imbalanced dataset; machine learning (ML); network automation; network measurement

Funding

  1. MITACS Accelerate Cluster [IT12571]
  2. Ciena Corporation

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The article proposes a machine learning method for automatically detecting network status and localizing faults, achieving accuracies of up to 99% on a dataset collected through an emulated network. This method outperforms existing works in classifying network status between normal, congestion, and network fault.
Although the autonomous detection of network status and localization of network faults can be a valuable tool for network and service operators, very few works have investigated this subject. As a result in today's networks, fault detection and localization remains a mostly manual process. In this article, we propose a machine learning (ML) method that can automatically detect the status of a network and localize faults. Our method uses the decision tree, gradient boosting (GB), and extreme GB ML algorithms to detect the network status as normal, congestion, and network fault. In comparison, existing related work can at best classify the network status as faulty or nonfaulty. Experimental results show that our method yields accuracies of up to 99% on a dataset collected through an emulated network.

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