机器时代移动网络QoE评估与优化研究进展

D. Laselva, M. Mattina, T. Kolding, J. Hui, Lily Liu, Arne Weber
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引用次数: 8

摘要

尽管移动网络中人类通信服务(如语音和视频流)的QoE评估方法是一个广泛研究的主题,但仍有几个挑战尚未解决,包括行业一致同意的端到端性能指标的定义。5G将引入各种各样的新用例和多样化的业务,给QoE评估带来进一步的挑战。例如,新兴的机器通信服务可能会受到机器间相互依赖(即系统效应)的影响,这一点尚未得到充分理解。此外,为了支持具有超高可用性的可靠实时服务,未来的QoE优化必须采用跨所有网络域的更平衡的方法,而不是目前以RAN为中心的方法。本文讨论了这些挑战,并介绍了适用于5G移动网络的QoE评估方法的可预见演变,以适应已确定的挑战。在当今最佳实践的基础上,我们描述了一个灵活的QoE服务模型和评估框架,它依赖于关键质量指标(KQIs),并允许对每个服务的QoE进行客观评估。同时,该模型可以根据网络运营商的策略和实际网络设计,有效地指导网络优化过程。我们在一级运营商的实时LTE网络中验证了提出的框架,展示了其清晰识别性能优化阶段的能力,并指出了如何将其应用于5G以支持机器驱动的通信。
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Advancements of QoE assessment and optimization in mobile networks in the machine era
Although QoE evaluation methodologies for human communication services in mobile networks — such as voice and video streaming — are a widely researched topic, several challenges remain yet unresolved including industry-agreed definitions of end-to-end performance indicators. With 5G, a wide variety of new use cases and diverse services shall be introduced, posing further challenges to the QoE assessment. For instance, emerging machine communication services may suffer from interdependencies across machines (i.e. systemic effects), which have yet to be fully understood. Further, to support reliable real-time services with ultra-high availability, future QoE optimization must take a more balanced approach across all network domains as opposed to the RAN focused approach of today. This paper discusses those challenges and presents the foreseen evolution of the QoE evaluation methodologies suitable to 5G mobile networks to accommodate the identified challenges. Building on today's best practices, we describe a flexible QoE service model and evaluation framework, which relies on Key Quality Indicators (KQIs) and allows for objective assessment of the QoE on a per service basis. At the same time, the model can effectively guide network optimization processes according to the network operator's strategy and actual network design. We validate the proposed framework in a live LTE network of a Tier-1 operator, demonstrating its capability to clearly identify the phases of performance optimization as well as we indicate how it could be applied to 5G to support machine-driven communications.
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