End-to-End Quality-of-Service Assurance with Autonomous Systems: 5G/6G Case Study

V. Mai, R. La, Tao Zhang, A. Battou
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引用次数: 1

Abstract

Providing differentiated services to meet the unique requirements of different use cases is a major goal of the fifth generation (5G) telecommunication networks and will be even more critical for future 6G systems. Fulfilling this goal requires the ability to assure quality of service (QoS) end to end (E2E), which remains a challenge. A key factor that makes E2E QoS assurance difficult in a telecommunication system is that access networks (ANs) and core networks (CNs) manage their resources autonomously. So far, few results have been available that can ensure E2E QoS over autonomously managed ANs and CNs. Existing techniques rely predominately on each subsystem to meet static local QoS budgets with no recourse in case any subsystem fails to meet its local budgets and, hence will have difficulty delivering E2E assurance. Moreover, most existing distributed optimization techniques that can be applied to assure E2E QoS over autonomous subsystems require the subsystems to exchange sensitive information such as their local decision variables. This paper presents a novel framework and a distributed algorithm that can enable ANs and CNs to autonomously "cooperate" with each other to dynamically negotiate their local QoS budgets and to collectively meet E2E QoS goals by sharing only their estimates of the global constraint functions, without disclosing their local decision variables. We prove that this new distributed algorithm converges to an optimal solution almost surely, and also present numerical results to demonstrate that the convergence occurs quickly even with measurement noise.
自主系统的端到端服务质量保证:5G/6G案例研究
提供差异化服务以满足不同用例的独特需求是第五代(5G)电信网络的主要目标,对于未来的6G系统将更加重要。实现这一目标需要确保端到端服务质量(QoS)的能力,这仍然是一个挑战。在电信系统中,端到端服务质量难以保证的一个关键因素是接入网和核心网对其资源的自主管理。到目前为止,很少有结果可以确保自主管理的网络和网络的端到端QoS。现有的技术主要依赖于每个子系统来满足静态的本地QoS预算,如果任何子系统无法满足其本地预算,则没有追索权,因此难以提供端到端保证。此外,大多数现有的分布式优化技术可用于确保自治子系统的端到端QoS,这些优化技术要求子系统交换敏感信息,例如它们的本地决策变量。本文提出了一种新的框架和分布式算法,使人工神经网络和人工神经网络能够相互自主“合作”,动态协商它们的局部QoS预算,并通过仅共享它们对全局约束函数的估计来共同满足端到端QoS目标,而不泄露它们的局部决策变量。我们证明了这种新的分布式算法几乎可以肯定地收敛到最优解,并给出了数值结果,表明即使有测量噪声也能快速收敛。
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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