Lifelong QoT prediction: an adaptation to real-world optical networks

IF 4 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Qihang Wang;Zhuojun Cai;Faisal Nadeem Khan
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Abstract

Predicting the quality of transmission (QoT) is a critical task in the management and optimization of modern fiber-optic networks. Traditional machine learning (ML) QoT prediction models, typically trained on pre-collected datasets, are designed to make long-term predictions once deployed. However, this static training strategy often falls short in the face of time-dependent network evolution and variations. We identify the root cause of these shortcomings as shifts in data distribution, which are not accounted for in conventional static models. In response to these challenges, we propose an online continual learning pipeline that is specifically designed for stable QoT prediction in optical networks. This pipeline directly addresses the problem of distribution shifts by continuously updating the prediction model in response to real-time network data. We explore and compare various strategies within this framework and demonstrate that the integration of the adaptive retraining strategy and the regularized online continual learning algorithm (OCL-REG) significantly enhances the QoT prediction stability while optimizing the resource efficiency. OCL-REG demonstrates superior adaptability and stability, achieving an average cumulative mean squared error (C-MSE) of 0.19 on a testbench with a data distribution shift sequence containing 1000 batches. Moreover, the OCL-REG model requires fewer samples for adaptation, averaging around 107 samples, compared to the conventional retraining strategy, which requires an average of 253 samples. Our approach presents a paradigm shift in QoT prediction, moving from a static to a dynamic, lifelong learning model that is more attuned to the evolving realities of real fiber-optic networks.
终生 QoT 预测:适应真实世界的光网络
预测传输质量(QoT)是管理和优化现代光纤网络的一项关键任务。传统的机器学习(ML)QoT 预测模型通常在预先收集的数据集上进行训练,旨在部署后进行长期预测。然而,面对随时间变化的网络演进和变化,这种静态训练策略往往会出现不足。我们发现这些缺陷的根本原因在于数据分布的变化,而传统的静态模型并没有考虑到这一点。为了应对这些挑战,我们提出了一种在线持续学习管道,专门用于光网络中稳定的 QoT 预测。该管道根据实时网络数据不断更新预测模型,直接解决了分布偏移的问题。我们探索并比较了这一框架中的各种策略,结果表明,自适应再训练策略与正则化在线持续学习算法(OCL-REG)的整合能显著提高 QoT 预测的稳定性,同时优化资源效率。OCL-REG 展示了卓越的适应性和稳定性,在包含 1000 个批次的数据分布转移序列的测试平台上实现了 0.19 的平均累积均方误差 (C-MSE)。此外,与平均需要 253 个样本的传统再训练策略相比,OCL-REG 模型所需的适应样本更少,平均约为 107 个样本。我们的方法实现了 QoT 预测的范式转变,从静态模型转变为动态的终身学习模型,更加适应实际光纤网络不断发展的现实。
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来源期刊
CiteScore
9.40
自引率
16.00%
发文量
104
审稿时长
4 months
期刊介绍: The scope of the Journal includes advances in the state-of-the-art of optical networking science, technology, and engineering. Both theoretical contributions (including new techniques, concepts, analyses, and economic studies) and practical contributions (including optical networking experiments, prototypes, and new applications) are encouraged. Subareas of interest include the architecture and design of optical networks, optical network survivability and security, software-defined optical networking, elastic optical networks, data and control plane advances, network management related innovation, and optical access networks. Enabling technologies and their applications are suitable topics only if the results are shown to directly impact optical networking beyond simple point-to-point networks.
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