Multi-Generator Continual Learning for Robust Delay Prediction in 6G

Xiaoyu Lan;Jalil Taghia;Hannes Larsson;Andreas Johnsson
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Abstract

In future 6G networks, dependable networks will enable telecommunication services such as remote control of robots or vehicles with strict requirements on end-to-end network performance in terms of delay, delay variation, tail distributions, and throughput. With respect to such networks, it is paramount to be able to determine what performance level the network segment can guarantee at a given point in time. One promising approach is to use predictive models trained using machine learning (ML). Predicting performance metrics such as one-way delay (OWD), in a timely manner, provides valuable insights for the network, user equipments (UEs), and applications to address performance trends, deviations, and violations. Over the course of time, a dynamic network environment results in distributional shifts, which causes catastrophic forgetting and drop of ML model performance. In continual learning (CL), the model aims to achieve a balance between stability and plasticity, enabling new information to be learned while preserving previously learned knowledge. In this paper, we target on the challenges of catastrophic forgetting of OWD prediction model. We propose a novel approach which introducing the concept of multi-generator for the state-of-the-art CL generative replay framework, along with tabular variational autoencoders (TVAE) as generators. The domain knowledge of UE capabilities is incorporated into the learning process for determining generator setup and relevance. The proposed approach is evaluated across a diverse set of scenarios with data that is collected in a realistic 5G testbed, demonstrating its outstanding performance in comparison to baselines.
基于多发生器连续学习的6G鲁棒延迟预测
在未来的6G网络中,可靠的网络将实现远程控制机器人或车辆等电信业务,对端到端网络性能在延迟、延迟变化、尾部分布和吞吐量方面有严格的要求。对于这样的网络,最重要的是能够确定网络段在给定时间点可以保证的性能水平。一种很有前途的方法是使用机器学习(ML)训练的预测模型。及时预测性能指标,如单向延迟(OWD),可以为网络、用户设备和应用程序提供有价值的见解,以解决性能趋势、偏差和违规问题。随着时间的推移,动态网络环境会导致分布变化,从而导致灾难性的遗忘和ML模型性能下降。在持续学习(CL)中,模型的目标是在稳定性和可塑性之间取得平衡,既能学习到新的信息,又能保留之前所学的知识。在本文中,我们针对OWD预测模型的灾难性遗忘的挑战。我们提出了一种新的方法,该方法引入了最先进的CL生成重播框架的多生成器概念,以及表格变分自编码器(TVAE)作为生成器。UE能力的领域知识被纳入到确定发电机设置和相关性的学习过程中。所提出的方法在不同的场景中进行了评估,并在现实的5G测试平台中收集了数据,与基线相比,展示了其出色的性能。
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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