Machine Learning-Aided Optical Performance Monitoring Techniques: A Review

D. K. Tizikara, J. Serugunda, A. Katumba
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引用次数: 5

Abstract

Future communication systems are faced with increased demand for high capacity, dynamic bandwidth, reliability and heterogeneous traffic. To meet these requirements, networks have become more complex and thus require new design methods and monitoring techniques, as they evolve towards becoming autonomous. Machine learning has come to the forefront in recent years as a promising technology to aid in this evolution. Optical fiber communications can already provide the high capacity required for most applications, however, there is a need for increased scalability and adaptability to changing user demands and link conditions. Accurate performance monitoring is an integral part of this transformation. In this paper, we review optical performance monitoring techniques where machine learning algorithms have been applied. Moreover, since many performance monitoring approaches in the optical domain depend on knowledge of the signal type, we also review work for modulation format recognition and bitrate identification. We additionally briefly introduce a neuromorphic approach as an emerging technique that has only recently been applied to this domain.
机器学习辅助光学性能监测技术综述
未来的通信系统面临着对高容量、动态带宽、可靠性和异构业务日益增长的需求。为了满足这些要求,网络变得越来越复杂,因此需要新的设计方法和监测技术,因为它们正在向自治方向发展。近年来,机器学习作为一种有前途的技术已经走到了最前沿,以帮助这种演变。光纤通信已经可以为大多数应用提供所需的高容量,然而,还需要增加可扩展性和适应性,以适应不断变化的用户需求和链路条件。准确的性能监控是这一转变不可或缺的一部分。在本文中,我们回顾了应用机器学习算法的光学性能监测技术。此外,由于光学领域的许多性能监测方法依赖于信号类型的知识,我们还回顾了调制格式识别和比特率识别的工作。此外,我们还简要介绍了神经形态方法作为一种新兴技术,最近才应用于该领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
4.90
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0.00%
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