论文标题
在无人驾驶台上的覆盖范围和资源分配的深度加固学习
Deep Reinforcement Learning for Combined Coverage and Resource Allocation in UAV-aided RAN-slicing
论文作者
论文摘要
网络切片是一种经过良好评估的方法,可以在新兴的第五代新广播中虚拟化移动核心和无线电访问网络(RAN)。在处理新兴和多样化的垂直应用时,切片至关重要。 5G还设想无人机(UAV)是蜂窝网络标准的关键要素,旨在用作空中基站,并利用其灵活而快速的部署以增强无线网络性能。这项工作提出了一个无人机辅助的5G网络,在该网络中,空中基站(UAV-BS)具有旨在优化一组用户服务水平协议(SLA)满意度的网络切片功能。用户属于5G服务类型的三种异构类别,即增强的移动宽带(EMBB),超可靠的低延迟通信(URLLC)和大规模的机器型通信(MMTC)。引入了网络切片环境中UAV-B的多代理和多决策深度强化学习,旨在通过将无线电资源分配与无人机2维轨迹的切片和完善,旨在优化用户SLA满意度的比率。在各种情况下,已经对提出的策略的性能进行了测试并将其与基准的启发式方法进行了比较,并强调了满意的用户的比例更高(至少增加了27%)。
Network slicing is a well assessed approach enabling virtualization of the mobile core and radio access network (RAN) in the emerging 5th Generation New Radio. Slicing is of paramount importance when dealing with the emerging and diverse vertical applications entailing heterogeneous sets of requirements. 5G is also envisioning Unmanned Aerial Vehicles (UAVs) to be a key element in the cellular network standard, aiming at their use as aerial base stations and exploiting their flexible and quick deployment to enhance the wireless network performance. This work presents a UAV-assisted 5G network, where the aerial base stations (UAV-BS) are empowered with network slicing capabilities aiming at optimizing the Service Level Agreement (SLA) satisfaction ratio of a set of users. The users belong to three heterogeneous categories of 5G service type, namely, enhanced mobile broadband (eMBB), ultra-reliable low-latency communication (URLLC), and massive machine-type communication (mMTC). A first application of multi-agent and multi-decision deep reinforcement learning for UAV-BS in a network slicing context is introduced, aiming at the optimization of the SLA satisfaction ratio of users through the joint allocation of radio resources to slices and refinement of the UAV-BSs 2-dimensional trajectories. The performance of the presented strategy have been tested and compared to benchmark heuristics, highlighting a higher percentage of satisfied users (at least 27% more) in a variety of scenarios.