The proliferation of emergent network applications (e.g., AR/VR, telesurgery, real-time communications) is increasing the difficulty of managing modern communication networks. These applications typically have stringent requirements (e.g., ultra-low deterministic latency), making it more difficult for network operators to manage their network resources efficiently. In this article, we propose the Digital Twin Network (DTN) as a key enabler for efficient network management in modern networks. We describe the general architecture of the DTN and argue that recent trends in Machine Learning (ML) enable building a DTN that efficiently and accurately mimics real-world networks. In addition, we explore the main ML technologies that enable developing the components of the DTN architecture. Finally, we describe the open challenges that the research community has to address in the upcoming years in order to enable the deployment of the DTN in real-world scenarios.
翻译:新兴网络应用(如AR/VR、远程外科、实时通信)的扩散增加了管理现代通信网络的难度,这些应用通常有严格的要求(如超低确定性隐蔽),使得网络运营商更难有效管理其网络资源。在本篇文章中,我们提议数字双网络作为现代网络有效管理网络的关键促进因素。我们描述DTN的总体结构,并争论说,机器学习(ML)的近期趋势使得能够建立一个高效和准确地模拟现实世界网络的DTN。此外,我们探索能够开发DTN结构组成部分的主要ML技术。最后,我们描述了研究界在未来几年中必须应对的公开挑战,以便在现实世界情景中部署DTN。