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This paper proposes a self-taught anomaly detection framework for optical networks. The proposed framework makes use of a hybrid unsupervised and supervised machine learning scheme. First, it employs an unsupervised data clustering module (DCM) to analyze the patterns of monitoring data. The DCM enables a self-learning capability that eliminates the requirement of prior knowledge of abnormal network behaviors and therefore can potentially detect unforeseen anomalies. Second, we introduce a self-taught mechanism that transfers the patterns learned by the DCM to a supervised data regression and classification module (DRCM). The DRCM, whose complexity is mainly related to the scale of the applied supervised learning model, can potentially facilitate more scalable and time-efficient online anomaly detection by avoiding excessively traversing the original dataset. We designed the DCM and DRCM based on the density-based clustering algorithm and the deep neural network structure, respectively. Evaluations with experimental data from two use cases (i.e., single-point detection and end-to-end detection) demonstrate that up to 99% anomaly detection accuracy can be achieved with a false positive rate below 1%.
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Xiaoliang Chen
University of Science and Technology of China
Baojia Li
Jiangsu University
Roberto Proietti
Polytechnic University of Turin
Journal of Lightwave Technology
University of California, Davis
University of Science and Technology of China
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Chen et al. (Fri,) studied this question.
synapsesocial.com/papers/6a0ee2329df4132b62f9c980 — DOI: https://doi.org/10.1109/jlt.2019.2902487
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