Khouloud Abdelli’s scientific contributions

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Publications (2)


Figure 1: Overview of the ML-based fiber monitoring process
Figure 2: Structure of the proposed gated recurrent unit based autoencoder for optical fiber anomaly detection.
Figure 4: Experimental setup for generating OTDR data containing different faults induced at different locations in an optical network (PC -physical contact, APC -angled PC, LC -Lucent connector, SFP+ -small form-factor pluggable)
Figure 5: The optimal threshold selection based on the precision, recall and F1 scores yielded by GRU-AE.
Figure 6: The receiver operating characteristic curve of GRU-AE

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ML-based Anomaly Detection in Optical Fiber Monitoring
  • Preprint
  • File available

February 2022

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714 Reads

Khouloud Abdelli

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Joo Yeon Cho

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Carsten Tropschug

Secure and reliable data communication in optical networks is critical for high-speed internet. We propose a data driven approach for the anomaly detection and faults identification in optical networks to diagnose physical attacks such as fiber breaks and optical tapping. The proposed methods include an autoencoder-based anomaly detection and an attention-based bidirectional gated recurrent unit algorithm for the fiber fault identification and localization. We verify the efficiency of our methods by experiments under various attack scenarios using real operational data.

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Secure Collaborative Learning for Predictive Maintenance in Optical Networks

November 2021

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21 Reads

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1 Citation

Building a reliable and accurate machine learning (ML) model is challenging in optical networks when training datasets are business-sensitive. We propose a framework of secure collaborative ML learning for predictive maintenance on cross-vendor datasets. Our framework is based on federated learning and multi-party computation technologies. Each vendor builds a local ML model based on its own private data. A server builds a global ML model by aggregating multiple local ML models in a private-preserving way. The server computes only the sum of the local models but cannot see any local model individually by the multi-party computation technique. The vendor-confidential dataset is never exposed to the server or other vendors. Moreover, after the global ML model is deployed in optical networks, the measured data compared to the prediction are privately distributed to the local model owners, which is beneficial to vendors. We applied our framework to the remaining useful life (RUL) prediction of laser device. Our experiments show that an accurate ML model can be built using sensitive datasets in a federated learning setting.

Citations (1)


... In the paper by Abdelli, Cho, and Pachnicke (2021) the authors focused on the collaboration aspect of federated learning, and applied federated learning to RUL estimation of a laser device. ...

Reference:

Collaborative Training of Data-Driven Remaining Useful Life Prediction Models Using Federated Learning
Secure Collaborative Learning for Predictive Maintenance in Optical Networks
  • Citing Conference Paper
  • November 2021