Zhao Yongli, Yan Boyuan, Liu Dongmei, He Yongqi, Wang Dajiang, Zhang Jie
Opt Express. 2018 Oct 29;26(22):28713-28726. doi: 10.1364/OE.26.028713.
As optical networks undergo rapid development, the trade-offs among higher network service capability, and increasing operating expense (OPEX) about operations, administration and maintenance (OAM) become telecom operators' key obstacles. Intelligent and automatic OAM is considered to effectively satisfy service requirements, while dampening OPEX growth. In particular, machine learning (ML) has been investigated as a possible method of replacing human image recognition, nature language processing, automatic drive, and so forth. This is because of its essential feature extraction ability. ML application in optical networks was studied in a preliminary way recently. In ML-enabled optical networks, huge data storage and powerful computing resources are required to handle computer-intensive tasks performed in order to analyze features from big data sets. Integration of these two key resources into existing optical network architectures, in order to improve network performance, is an emerging challenge for ML-enabled optical networks. This article proposes a novel optical network architecture, which is based on software-defined networking (SDN), which is also named self-optimizing optical networks (SOON). First, we comb through intelligence development of optical networks, and introduce SOON as an OAM-oriented optical network architecture. Second, we demonstrate four typical applications within SOON, including tidal traffic prediction, alarm prediction, anomaly action detection, and routing and wavelength assignment. Finally, we discuss some open issues.
随着光网络的快速发展,在更高的网络服务能力与运营、管理和维护(OAM)方面不断增加的运营成本(OPEX)之间进行权衡,已成为电信运营商的主要障碍。智能且自动化的OAM被认为可以有效满足服务需求,同时抑制OPEX的增长。特别是,机器学习(ML)已被研究作为一种可能替代人类图像识别、自然语言处理、自动驾驶等的方法。这是因为它具有关键的特征提取能力。最近对ML在光网络中的应用进行了初步研究。在基于ML的光网络中,需要巨大的数据存储和强大的计算资源来处理为从大数据集分析特征而执行的计算机密集型任务。将这两种关键资源集成到现有的光网络架构中以提高网络性能,是基于ML的光网络面临的一个新挑战。本文提出了一种基于软件定义网络(SDN)的新型光网络架构,该架构也称为自优化光网络(SOON)。首先,我们梳理光网络的智能发展情况,并将SOON作为一种面向OAM的光网络架构进行介绍。其次,我们展示了SOON中的四个典型应用,包括潮汐流量预测、告警预测、异常行为检测以及路由和波长分配。最后,我们讨论了一些开放问题。