QLRan: Latency-Quality Tradeoffs and Task Offloading in Multi-node Next Generation RANs

Ayman Younis, Brian Qiu, D. Pompili
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引用次数: 1

Abstract

Next-Generation Radio Access Network (NG-RAN) is an emerging paradigm that provides flexible distribution of cloud computing and radio capabilities at the edge of the wireless Radio Access Points (RAPs). Computation at the edge bridges the gap for roaming end users, enabling access to rich services and applications. In this paper, we propose a multi-edge node task offloading system, i.e., QLRan, a novel optimization solution for latency and quality tradeoff task allocation in NG-RANs. Considering constraints on service latency, quality loss, and edge capacity, the problem of joint task offloading, latency, and Quality Loss of Result (QLR) is formulated in order to minimize the User Equipment (UEs) task offloading utility, which is measured by a weighted sum of reductions in task completion time and QLR cost. The QLRan optimization problem is proved as a Mixed Integer Nonlinear Program (MINLP) problem, which is a NP-hard problem. To efficiently solve the QLRan optimization problem, we utilize Linear Programming (LP)-based approach that can be later solved by using convex optimization techniques. Additionally, a programmable NG-RAN testbed is presented where the Central Unit (CU), Distributed Unit (DU), and UE are virtualized using the OpenAirInterface (OAI) software platform to characterize the performance in terms of data input, memory usage, and average processing time with respect to QLR levels. Simulation results show that our algorithm performs significantly improves the network latency over different conflgurations.
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下一代多节点局域网的延迟质量权衡与任务分流
下一代无线接入网(NG-RAN)是一种新兴范例,可在无线无线接入点(rap)的边缘提供灵活的云计算和无线电功能分布。边缘计算弥补了漫游终端用户之间的差距,使其能够访问丰富的服务和应用程序。在本文中,我们提出了一种多边缘节点任务卸载系统,即QLRan,这是一种针对ng - ran中延迟和质量权衡任务分配的新优化方案。考虑到服务延迟、质量损失和边缘容量的约束,提出了联合任务卸载、延迟和结果质量损失(QLR)问题,以最小化用户设备(ue)任务卸载效用,该效用由任务完成时间和QLR成本减少的加权总和来衡量。证明了QLRan优化问题是一个混合整数非线性规划(MINLP)问题,属于np困难问题。为了有效地解决QLRan优化问题,我们采用了基于线性规划(LP)的方法,然后可以使用凸优化技术来解决。此外,提出了一个可编程的NG-RAN测试平台,其中使用OpenAirInterface (OAI)软件平台对中央单元(CU),分布式单元(DU)和UE进行虚拟化,以表征数据输入,内存使用和相对于QLR级别的平均处理时间方面的性能。仿真结果表明,该算法显著改善了不同配置下的网络延迟。
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