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Harmonizing Artificial Intelligence with Radio Access Networks: Advances, Case Study, and Open Issues

机译:与无线电接入网络协调人工智能:进步,案例研究和开放问题

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摘要

Driven by the demands of efficient network operation and high service availability, the convergence of artificial intelligence (AI) with radio access networks (RANs) has drawn considerable attention. However, current academic research mainly focuses on applying AI into optimizing RANs with a few discussions on architecture design. This article surveys the recent progress achieved by industry in integrating AI into RANs, and proposes an AI-driven fog RAN (F-RAN) paradigm. Specifically, being wrappers of Al-re-lated functionalities, AI capsules are presented as new network functions in the F-RAN domain. With AI capsules, computation and cache resources at various fog nodes can be utilized to facilitate real-time AI-based F-RAN optimization and alleviate the transmission burden incurred by network data collection. At the edge cloud, a centralized AI brain for F-RANs is deployed, which incorporates a wireless-oriented auto-AI platform and a digital colon of the network environment for offline AI model training and evaluation. By the interplay among AI capsules and the AI brain, universal and endogenous intelligence can be fully realized within F-RANs, which in turn enhances system performance. Furthermore, we demonstrate the effectiveness of a scalable deep-reinforcement-learning-based method in minimizing energy consumption for a computation offloading use case. At last, open issues are identified in terms of interface standardization, federated learning, and transfer learning.
机译:通过有效的网络运营和高服务可用性的需求,具有无线电接入网络(RAN)的人工智能(AI)的收敛性引起了相当大的关注。然而,目前的学术研究主要侧重于将AI应用于优化RANS优化RANS关于建筑设计的讨论。这篇文章调查了行业将AI整合到RAN的最近进展,并提出了AI驱动的雾(F-RAN)范式。具体而言,作为al-Re-lated功能的包装,AI胶囊作为F-RAN域中的新网络功能呈现。对于各种雾节点的AI胶囊,可以利用各种雾节点的计算和高速缓存资源,以促进基于实时的F-RAN优化,并减轻网络数据收集所产生的传输负担。在边缘云处,部署了F-RAN的集中式AI大脑,其中包括面向无线的Auto-AI平台和网络环境的数字结肠,用于离线AI模型培训和评估。通过AI胶囊和AI大脑之间的相互作用,可以在F-RAN内充分实现普通和内源性智能,从而提高系统性能。此外,我们展示了一种可扩展的深加固学习的方法的有效性,使计算卸载用例最小化能量消耗。最后,在界面标准化,联合学习和转移学习方面确定了开放问题。

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  • 来源
    《IEEE Network》 |2021年第4期|144-151|共8页
  • 作者单位

    BUPT Beijing Peoples R China;

    BUPT Internet Things Beijing Peoples R China|BUPT Sch Informat & Commun Engn Beijing Peoples R China;

    New Technol Dept Datang Mobile Commun Equipment Co Ltd Beijing Peoples R China;

    BUPT Sch Sci Beijing Peoples R China;

    Datang Mobile Commun Equipment Co Ltd Beijing Peoples R China;

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  • 正文语种 eng
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