Cognitive Assurance Architecture for Optical Network Fault Management

In face of staggering traffic growth driven by cloud-based platforms, modern optical networks—forming the backbone of such connectivity—are faced with increasing requirements in terms of operational reliability. The challenge is that of cognition-driven learning and fault management workflows, cost-effectively assuring the next-generation networks. Machine learning, an artificial intelligence tool, can be conceived as an extremely promising instrument to address network assurance via dynamic data-driven operation, as opposed to static pre-engineered solutions. In this paper, we propose and demonstrate a cognitive fault detection architecture for intelligent network assurance. We introduce the concept of cognitive fault management, elaborate on its integration in transport software defined network controller, and demonstrate its operation based on real-world fault examples. Our framework both detects and identifies significant faults, and outperforms conventional fixed threshold-triggered operations, both in terms of detection accuracy and proactive reaction time.

[1]  Nick McKeown,et al.  OpenFlow: enabling innovation in campus networks , 2008, CCRV.

[2]  Takeshi Hoshida,et al.  Accurate prediction of quality of transmission with dynamically configurable optical impairment model , 2017, 2017 Optical Fiber Communications Conference and Exhibition (OFC).

[3]  Ethem Alpaydin Introduction to machine learning, 2rd ed , 2014 .

[4]  Dimitra Simeonidou,et al.  Optical networking: An Important Enabler for 5G , 2017, 2017 European Conference on Optical Communication (ECOC).

[5]  Achim Autenrieth,et al.  TSDN-Enabled Network Assurance: A Cognitive Fault Detection Architecture , 2017, 2017 European Conference on Optical Communication (ECOC).

[6]  Slavisa Aleksic Towards fifth-generation (5G) optical transport networks , 2015, 2015 17th International Conference on Transparent Optical Networks (ICTON).

[7]  Yoshua. Bengio,et al.  Learning Deep Architectures for AI , 2007, Found. Trends Mach. Learn..

[8]  Reza Nejabati,et al.  Multilayer network analytics with SDN-based monitoring framework , 2017, IEEE/OSA Journal of Optical Communications and Networking.

[9]  F. E. Grubbs Sample Criteria for Testing Outlying Observations , 1950 .

[10]  R. Lippmann,et al.  An introduction to computing with neural nets , 1987, IEEE ASSP Magazine.

[11]  Geoffrey E. Hinton,et al.  Learning representations by back-propagating errors , 1986, Nature.

[12]  Alex H. B. Duffy,et al.  The "What" and "How" of Learning in Design , 1997, IEEE Expert.

[13]  Hongwei Zhang,et al.  Learning Bayesian network classifiers from data with missing values , 2002, 2002 IEEE Region 10 Conference on Computers, Communications, Control and Power Engineering. TENCOM '02. Proceedings..

[14]  B. Rosner Percentage Points for a Generalized ESD Many-Outlier Procedure , 1983 .

[15]  R. Nejabati,et al.  Field trial of a novel SDN enabled network restoration utilizing in-depth optical performance monitoring assisted network re-planning , 2017, 2017 Optical Fiber Communications Conference and Exhibition (OFC).

[16]  Fernando Morales,et al.  Incremental capacity planning in optical transport networks based on periodic performance metrics , 2016, 2016 18th International Conference on Transparent Optical Networks (ICTON).

[17]  Gil Zussman,et al.  A machine learning approach for dynamic optical channel add/drop strategies that minimize EDFA power excursions , 2016 .

[18]  Mounia Lourdiane,et al.  Quality of Transmission Prediction with Machine Learning for Dynamic Operation of Optical WDM Networks , 2017, 2017 European Conference on Optical Communication (ECOC).

[19]  Roberto Proietti,et al.  Experimental assessment of degradation-triggered reconfiguration in optically interconnected cloud-RAN , 2017, 2017 Optical Fiber Communications Conference and Exhibition (OFC).

[20]  S. J. B. Yoo,et al.  Leveraging Deep Learning to Achieve Knowledge-based Autonomous Service Provisioning in Broker-based Multi-Domain SD-EONs with Proactive and Intelligent Predictions of Multi-Domain Traffic , 2017, 2017 European Conference on Optical Communication (ECOC).

[21]  Achim Autenrieth,et al.  First field demonstration of cloud datacenter workflow automation employing dynamic optical transport network resources under OpenStack & OpenFlow orchestration , 2013 .

[22]  Ricard Vilalta,et al.  Control, Management and Orchestration of Optical Networks: An Introduction, Challenges and Current Trends , 2017, 2017 European Conference on Optical Communication (ECOC).

[23]  Marc Ruiz,et al.  Bringing data analytics to the network nodes for efficient traffic anomalies detection , 2017, 2017 19th International Conference on Transparent Optical Networks (ICTON).

[24]  AKHIL GUPTA,et al.  A Survey of 5G Network: Architecture and Emerging Technologies , 2015, IEEE Access.

[25]  Víctor López,et al.  The role of SDN in application centric IP and optical networks , 2016, 2016 European Conference on Networks and Communications (EuCNC).