Digital-twin-assisted meta learning for soft-failure localization in ROADM-based optical networks

Author:

Wang Ruikun1ORCID,Zhang JiaweiORCID,Gu ZhiqunORCID,Ibrahimi Memedhe1ORCID,Zhang Bojun,Musumeci Francesco1ORCID,Tornatore Massimo1ORCID,Ji YuefengORCID

Affiliation:

1. Politecnico di Milano

Abstract

Reconfigurable optical add/drop multiplexer (ROADM) nodes are evolving towards high-degree architectures to support growing traffic and enable flexible network connectivity. Due to the complex composition of high-degree ROADMs, soft failures may occur between both inter- and intra-node components, like wavelength selective switches and fiber spans. The intricate ROADM structure significantly contributes to the challenge of localizing inter-/intra-node soft failures in ROADM-based optical networks. Machine learning (ML) has shown to be a promising solution to the problem of soft-failure localization, enabling network operators to take accurate and swift measures to overcome such challenges. However, data scarcity is a main hindrance when using ML for soft-failure localization, especially in the complex scenario of inter- and intra-node soft failures. In this work, we propose a digital-twin-assisted meta-learning framework to localize inter-/intra-node soft failures with limited samples. In our proposed framework, we construct several mirror models using a digital twin of the physical optical network and then generate multiple training tasks. These training tasks serve as pretraining data for the meta learner. Then, we use real data for fine-tuning and testing of the meta learner. The proposed framework is compared with the rule-based reasoning method, transfer-learning-based method, and artificial-neural-network-based method with no pretraining. Experimental results indicate that the proposed framework improves localization accuracy by over 15%, 33%, and 54%, on average, compared to benchmark approaches, respectively.

Funder

National Key Research and Development Program of China

National Natural Science Foundation of China

Xiaomi Young Talents Program

Italian National Recovery and Resilience Plan

Publisher

Optica Publishing Group

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Poster: Flexible Scheduling of Network and Computing Resources for Distributed AI Tasks;Proceedings of the ACM SIGCOMM 2024 Conference: Posters and Demos;2024-08-04

2. Vertical Federated Learning for Failure Localization in Partially Disaggregated Optical Networks;2024 IEEE 25th International Conference on High Performance Switching and Routing (HPSR);2024-07-22

3. Introduction to the ECOC 2023 Special Edition;Journal of Optical Communications and Networking;2024-06-25

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