Efficient Video QoE Prediction in Intelligent O-RAN

Aditya Padmakar Kulkarni, N. Saxena, A. Roy
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Abstract

Open Radio Access Network (O-RAN) is a platform developed by a collaboration between wireless operators, infrastructure vendors, and service providers for deploying mobile fronthaul and midhaul networks, built entirely on cloud-native principles. The vision of O-RAN lies in the virtualization of traditional wireless infrastructure components, like Central Units (CU), Radio Units (RU), and Distributed Units (DU). O-RAN decouples the above-mentioned wireless infrastructure components into open-source elements, operating consistently with other elements of different vendors in the network. Quality of Experience (QoE) deals with a user's subjective measure of satisfaction. RAN Intelligent Controller (RIC) in O-RAN provides flexibility to intelligently program and control RAN functions using AI/ML-based models. We argue that various QoE parameters can be measured and operated by the RIC in O-RAN. We propose to improve the efficiency of O-RAN's radio resources by creating a RIC xApp that estimates the QoE measured using Video Mean Opinion of Score (MOS), and accurately optimizes the usage of radio resources across multiple network slices. We use predictive AI/ML-based models to accurately predict the QoE parameters in the network after which we can optimize the usage of network compo-nents leading to an enhanced user experience. Simulation results on 3 simulated data sets show that our proposed approach can achieve up to 95% QoE prediction accuracy.
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智能 O-RAN 中的高效视频 QoE 预测
开放无线接入网(O-RAN)是由无线运营商、基础设施供应商和服务提供商合作开发的平台,用于部署移动前端和中继网络,完全基于云原生原则构建。O-RAN 的愿景在于虚拟化传统的无线基础设施组件,如中央单元 (CU)、无线单元 (RU) 和分布式单元 (DU)。O-RAN 将上述无线基础设施组件解耦为开源组件,与网络中不同供应商的其他组件一致运行。体验质量(QoE)涉及用户的主观满意度。O-RAN 中的 RAN 智能控制器 (RIC) 具有灵活性,可使用基于人工智能/ML 的模型对 RAN 功能进行智能编程和控制。我们认为,O-RAN 中的 RIC 可以测量和操作各种 QoE 参数。我们建议通过创建一个 RIC xApp 来提高 O-RAN 无线电资源的效率,该 RIC xApp 可估算使用视频平均评分(MOS)测量的 QoE,并准确优化多个网络片的无线电资源使用。我们使用基于人工智能/ML 的预测模型来准确预测网络中的 QoE 参数,然后优化网络组件的使用,从而提升用户体验。在 3 个模拟数据集上的仿真结果表明,我们提出的方法可以实现高达 95% 的 QoE 预测准确率。
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