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Optical Impairment Compensation in Fiber Communication Systems Based on Artificial Intelligence: A Comprehensive Survey

机译:基于人工智能的光纤通信系统中的光学减值补偿:全面调查

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The global demand for high-speed communication has increased dramatically over the past few years when data beginning to dominating of the traffic according to the Cisco Visual Networking Index (VNI). Data traffic is triple between 2014 and 2020, mainly, due to developing applications that consume bandwidth such as cloud services, HD video, high quality of real-time video transmission, virtual- augmented reality (VR-AR), online- games (video games), exchange of multimedia via smartphones and the more like. In fact, in 2020, more than a million minutes of multimedia (video) content is transiting the IP network every second according to the VNI; and the demands will exceed the capability of the current (core) internet backbone systems, in which optical communications are the main infrastructure. In this paper, the focus was on reviewing the mechanisms used for the most important and most effective techniques used to increase the capacity of optical transmission systems, namely Nonlinear Compensation (NLC) which work to reduce the nonlinear impairments that represent the main intrinsic challenges and the main capacity limitations facing the optical systems. The traditional NLC techniques were determined based on the approximate solution of the Nonlinear Schrodinger Equation (NLSE) through Digital Back Propagation (DBP), or Split- step Fourier Method (SSFM). however, their implementation demands excessive signal processing resources, and high-level accurate knowledge. A completely new approach that uses artificial intelligence (AI) algorithms to identify and solve these impairments has been studied in this paper. Traditional NLC techniques are reviewed in the first part to mitigation the nonlinearities and estimate the quality of transmission (QoT). Whereas in the second part, we review the uses of AI techniques that have been studied in applications related to monitoring performance, reduce nonlinearity, and quantify QoT. Finally, this paper presents a summary with a conclusion and outlook for development and challenges in optical fiber communication systems where AI is predictable to represent a hot major role in the near future.
机译:在根据思科视觉网络指数(VNI)的数据开始占据流量的数据开始时,过去几年的全球对高速通信的需求急剧增加。数据流量是2014年和2020年之间的三倍,主要是由于开发消耗带宽,高清视频,高质量的实时视频传输,虚拟增强现实(VR-AR),在线游戏(视频游戏),通过智能手机交换多媒体,更像。事实上,在2020年,超过一百万分钟的多媒体(视频)内容正在根据VNI每秒跨越IP网络;并且需求将超过当前(核心)互联网骨干系统的能力,其中光通信是主要基础设施。在本文中,重点是审查用于提高光传输系统容量的最重要和最有效技术的机制,即非线性补偿(NLC),这使得减少代表主要内在挑战的非线性损伤和光学系统面临的主要容量限制。基于非线性Schrodinger方程(NLSE)通过数字回传播(DBP)或分流傅立叶方法(SSFM)来确定传统的NLC技术。但是,它们的实现需要过度的信号处理资源,以及高级准确的知识。本文研究了使用人工智能(AI)算法来识别和解决这些损伤的全新方法。传统的NLC技术是在第一部分中审查的,以减轻非线性并估计传输质量(QOT)。虽然在第二部分中,我们审查了在与监测性能有关的应用中研究的AI技术的用途,减少了非线性和量化QOT。最后,本文介绍了光纤通信系统中的结论和挑战的摘要,其中AI可预测在不久的将来代表热门作用。

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