The combination of cloud computing capabilities at the network edge and artificial intelligence promise to turn future mobile networks into service- and radio-aware entities, able to address the requirements of upcoming latency-sensitive applications. In this context, a challenging research goal is to exploit edge intelligence to dynamically and optimally manage the Radio Access Network Slicing (that is a less mature and more complex technology than fifth-generation Network Slicing) and Radio Resource Management, which is a very complex task due to the mostly unpredictably nature of the wireless channel. This paper presents a novel architecture that leverages Deep Reinforcement Learning at the edge of the network in order to address Radio Access Network Slicing and Radio Resource Management optimization supporting latency-sensitive applications. The effectiveness of our proposal against baseline methodologies is investigated through computer simulation, by considering an autonomous-driving use-case.
翻译:将网络边缘的云计算能力与人工智能结合起来,有望将未来的移动网络转变为服务和无线电智能实体,能够满足即将到来的对潜伏敏感应用的要求;在这方面,一项具有挑战性的研究目标是利用边缘智能动态和最佳地管理无线电接入网络切片(与第五代网络切片相比不那么成熟和更为复杂的技术)和无线电资源管理(由于无线频道的性质大多难以预测,这是一个非常复杂的任务)和无线电资源管理(这是一项非常复杂的任务),本文展示了利用网络边缘的深强化学习的新结构,以便应对无线电接入网络切片和无线电资源管理优化,支持对潜伏敏感应用。我们针对基线方法的建议的有效性是通过计算机模拟,通过考虑自动驱动的使用案例,通过计算机模拟来调查。