论文标题
基于DRL的节能基带功能部署以服务为导向的开放RAN
DRL-based Energy-Efficient Baseband Function Deployments for Service-Oriented Open RAN
论文作者
论文摘要
开放无线电访问网络(Open RAN)引起了行业和学术界的极大关注,该工业和学术界在不同地方的多个处理单元中具有分散的基带功能。但是,不断扩展的架子范围,以及在不同位置和时间表之间资源利用率的波动,需要实施强大的功能管理策略,以最大程度地减少网络能源消耗。最近开发的策略忽略了激活时间和服务器激活过程所需的能量,而此过程可以抵消服务器冬眠中获得的势能节省。此外,可以在边缘计算服务器上部署以提供低延迟服务的用户平面功能已被充分考虑。在本文中,已经开发了基于多代理的深入增强学习(DRL)功能部署算法,再加上启发式方法,以最大程度地减少能源消耗,同时满足多个请求并遵守延迟和资源约束。在8-MEC网络中,基于DRL的解决方案与现有方法相比提供了高达51%的能源节省的基准的性能。在更大的14-MEC网络中,它保持了38%的节能优势并确保实时响应能力。此外,本文原型开放式测试台以验证所提出的解决方案的可行性。
Open Radio Access Network (Open RAN) has gained tremendous attention from industry and academia with decentralized baseband functions across multiple processing units located at different places. However, the ever-expanding scope of RANs, along with fluctuations in resource utilization across different locations and timeframes, necessitates the implementation of robust function management policies to minimize network energy consumption. Most recently developed strategies neglected the activation time and the required energy for the server activation process, while this process could offset the potential energy savings gained from server hibernation. Furthermore, user plane functions, which can be deployed on edge computing servers to provide low-latency services, have not been sufficiently considered. In this paper, a multi-agent deep reinforcement learning (DRL) based function deployment algorithm, coupled with a heuristic method, has been developed to minimize energy consumption while fulfilling multiple requests and adhering to latency and resource constraints. In an 8-MEC network, the DRL-based solution approaches the performance of the benchmark while offering up to 51% energy savings compared to existing approaches. In a larger network of 14-MEC, it maintains a 38% energy-saving advantage and ensures real-time response capabilities. Furthermore, this paper prototypes an Open RAN testbed to verify the feasibility of the proposed solution.