O-RAN architecture, interfaces, and standardization: Study and application to user intelligent admission control

Mohammad Alavirad, U. Hashmi, Marwan Mansour, Ali A. Esswie, R. Atawia, G. Poitau, Morris Repeta
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引用次数: 2

Abstract

Open radio access network (O-RAN), driven by O-RAN Alliance is based on the disaggregation of the traditional RAN systems into radio unit (RU), distributed unit (DU) and central unit (CU) components. It provides a unique opportunity to reduce the cost of wireless network deployment by using open-source software, serving as a foundation for O-RAN compliant functions, and by utilizing low-cost, generic white-box hardware for radio components. Relying on the two core pillars of openness and intelligence, there has been a coordinated global effort from operators and equipment providers to enhance the RAN architecture and improve its performance through virtualized network elements and open interfaces that incorporate intelligence in RAN. With the increased complexity of 5G networks and the demand to fulfill requirements, intelligence is becoming a key factor for automated deployment, operation, and optimization of open wireless networks. The first thrust of this paper surveys the AI/ML architecture in O-RAN specifications, key discussion points and future standardization directions, respectively. In the second part, we introduce a proof-of-concept use case on AI-driven network optimization within the near real-time RAN intelligent controller (near-RT RIC) and non-real time RIC (non-RT RIC). In particular, we investigate the user admission control problem, led by a deep learning-based algorithm, implemented as an xApp for network performance enhancement. Extensive system-level simulations are performed with NS-3 LTE to assess the proposed admission control algorithm. Accordingly, the proposed dynamic algorithm shows a significant admission control performance improvement and flexibility, compared to existing admission control static techniques, while satisfying the stringent quality of service targets of admitted devices. Finally, the paper offers insightful conclusions and findings on the AI-based modeling, model inference performance, key performance challenges and future research directions, respectively.
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O-RAN体系结构、接口和标准化:研究和应用于用户智能准入控制
开放无线接入网(O-RAN)是由O-RAN联盟推动的一种将传统的无线接入网系统分解为无线电单元(RU)、分布式单元(DU)和中央单元(CU)组件的网络。它提供了一个独特的机会,通过使用开源软件来降低无线网络部署的成本,作为O-RAN兼容功能的基础,并利用低成本、通用的白盒硬件用于无线电组件。依托于开放性和智能化这两大核心支柱,运营商和设备提供商在全球范围内共同努力,通过虚拟化网元和开放接口,将智能化融入到RAN中,增强RAN架构并提高其性能。随着5G网络复杂性的增加和满足需求的需求,智能正在成为开放无线网络自动化部署、运营和优化的关键因素。本文的第一个重点是对O-RAN规范中的AI/ML架构、关键讨论点和未来标准化方向进行了调查。在第二部分中,我们介绍了在近实时RAN智能控制器(近rt RIC)和非实时RIC(非rt RIC)中人工智能驱动的网络优化的概念验证用例。特别地,我们研究了用户准入控制问题,该问题由基于深度学习的算法领导,作为xApp实现,用于网络性能增强。利用ns - 3lte进行了广泛的系统级模拟,以评估所提出的接纳控制算法。因此,与现有的静态准入控制技术相比,所提出的动态算法在满足严格的准入设备服务质量目标的同时,显著提高了准入控制性能和灵活性。最后,本文分别对基于人工智能的建模、模型推理性能、关键性能挑战和未来研究方向给出了深刻的结论和发现。
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