基于机器学习的5G O-RAN xAPP减轻协同层干扰并改善HetNet环境中各种服务的QoE

Devanshu Anand, Mohammed Amine Togou, Gabriel-Miro Muntean
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引用次数: 0

摘要

由于富媒体服务在全球的扩散,数据流量暴涨。预计5G网络将在以下三类中支持许多尖端应用:增强型移动宽带、超可靠的低延迟通信和庞大的机器类型通信。对5G网络中各种服务的期望和目标给移动运营商带来了很大的压力,以保持高质量的体验(QoE)。5G异构网络(HetNets)的使用是最有前途的解决方案之一,它将为消费者提供与宏基站(MBS)或小蜂窝相关联的能力。在小型细胞中,飞细胞近年来受到了广泛的关注。然而,部署飞蜂窝最大的挑战是不同的飞蜂窝用户之间可能发生的高共层干扰。基于人工智能(AI)和机器学习(ML)的解决方案正在被纳入5G网络,以应对这一挑战。在本文中,我们提出了一种ML多分类和卸载方案(MLMCOS)来减轻5G HetNets中的协层干扰。MLMCOS根据用户的服务优先级以及用户所经历的协同层干扰将用户划分为多个类别。然后,它根据资源的可用性将其中的一部分卸载到附近的Femto基站(FBS),以确保高QoE。机器学习分类算法在准确性,召回率和精度方面进行评估。然后,将MLMCOS的性能与比例公平(PF)调度算法、变半径和比例公平调度(VR+PF)算法以及认知方法(CA)在视频多方法评估融合(VMAF)、r因子和RUM速度指数(RUMSI)方面的性能进行比较。
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A Machine Learning-based xAPP for 5G O-RAN to Mitigate Co-tier Interference and Improve QoE for Various Services in a HetNet Environment
Data traffic has skyrocketed as a result of the global proliferation of rich media services. A number of cutting-edge applications are predicted to be supported by 5G networks across the three categories: enhanced mobile broadband, ultra-reliable low latency communications, and enormous machine-type communications. The expectations and goals for the various services in the 5G networks have put a lot of pressure on mobile operators to maintain high Quality of Experience (QoE). The use of 5G Heterogeneous Networks (HetNets), which will provide consumers with the ability to be associated with either Macro Base Stations (MBS) or small cells, is one of the most promising solutions. Among the small cells, femtocells have drawn much attention recently. Yet, the most significant challenge with the deployment of femtocells is the high co-tier interference that can occur between different femtocell users. Artificial Intelligence (AI) and Machine Learning (ML)-based solutions are being incorporated in 5G networks to address this challenge. In this paper, we propose a ML Multi-Classification and Offloading Scheme (MLMCOS) to mitigate co-tier interference in 5G HetNets. MLMCOS classifies users into multiple classes based on their service priority along with their experienced co-tier interference. It then offloads some of them to the nearby Femto Base Stations (FBS) based on the availability of resources to ensure high QoE. ML classification algorithms are evaluated in terms of accuracy, recall, and precision. The performance of MLMCOS is then compared to those of Proportional Fair (PF) scheduling algorithm, Variable Radius and Proportional Fair scheduling (VR+PF) algorithm, and a Cognitive Approach (CA) in terms of Video Multimethod Assessment Fusion (VMAF), R-Factor, and RUM Speed Index (RUMSI).
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