基于3GPP网络的框架改进业务保障和负载平衡

Cara Watermann, Philipp Geuer, H. Wiemann, Roman Zhohov, Alexandros Palaios
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摘要

随着蜂窝网络向第六代演进,在服务质量(QoS)保证领域提出了新的方案。近年来,预测QoS作为满足特定连接性需求、支持服务保证和估计体验质量(QoE)的一种方式获得了一些势头。保证某个QoE的QoS要求在每个用例中是不同的,因此取决于许多因素,例如,选择一个可以保证特定QoS要求的适当单元。机器学习(ML)是一种通过使用预测性服务质量(pQoS)来提高网络能力以保证QoE的方法。反过来,这可以改善所提供的QoS,通过快速选择最合适的单元来减少延迟,并改善网络上的负载平衡。机器学习的采用在很大程度上取决于消除在商业网络中应用机器学习的一些障碍。例如,众所周知,基于ml的算法依赖于大量数据,这可能会增加用户设备(UE)的信令使用和电池消耗。我们提出了一个机器学习框架,它可以启用上述许多网络功能,而不需要引入新的信令类型或专有数据收集过程。我们展示了机器学习框架在频率间负载平衡用例上的好处,并讨论了机器学习如何提高UE和网络性能。最后,我们强调需要将预期干扰引入UE作为输入特征,以进一步提高QoS预测性能。我们在来自测试网络的数据上测试预测框架的性能,并评估例如不同预测阈值的影响。
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Towards a 3GPP Network-based Framework for Improving Service Assurance and Load Balancing
As cellular networks evolve towards the 6th generation, new schemes are proposed in the area of Quality of Service (QoS) assurance. In recent years, predicting QoS gained some momentum as a way of satisfying specific connectivity requirements, supporting service assurance, and estimating the Quality of Experience (QoE). The QoS requirements to guarantee a certain QoE differ per use case, and hence depend on a multitude of factors, e.g., selecting an appropriate cell that can guarantee specific QoS requirements. Machine Learning (ML) is proposed as a method to improve network capabilities for QoE assurance by the use of predictive Quality of Service (pQoS). This in return can improve the offered QoS, reduce latency by selecting the most appropriate cell quickly, and improve the load-balancing at the network. The adoption of ML depends heavily on removing some of the roadblocks of applying ML in commercial networks. For example, ML-based algorithms are known to depend on a large amount of data, which might increase the usage of signaling and the battery consumption at the User Equipment (UE). We present an ML framework that can enable many of the aforementioned network capabilities, which does not require the introduction of new signaling types or proprietary data collection procedures. We showcase the benefits of the ML framework on an inter-frequency load balancing use case and discuss how ML can improve UE and network performance. Finally, we highlight the need to introduce the expected interference to the UE as an input feature for further improving QoS prediction performance. We test the performance of the prediction framework on data coming from a test network and evaluate the effects of e.g., different prediction thresholds.
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