6G networks require a flexible infrastructure to dynamically provide ubiquitous network coverage. Mobile Access Points (MAP) deployment is a promising solution. In this paper, we formulate the joint 3D MAP deployment and user association problem over a dynamic network under interference and mobility constraints. First, we propose an iterative algorithm to optimize the deployment of MAPs. Our solution efficiently and quickly determines the number, position and configuration of MAPs for highly dynamic scenarios. MAPs provide appropriate Quality of Service (QoS) connectivity to mobile ground user in mmwave or sub-6GHz bands and find their optimal positions in a 3D grid. Each MAP also implies an energy cost (e.g. for travel) to be minimized. Once all MAPs deployed, a deep multiagent reinforcement learning algorithm is proposed to associate multiple users to multiple MAPs under interference constraint. Each user acts as an independent agent that operates in a fully distributed architecture and maximizes the network sum-rate.
翻译:6G网络需要灵活的基础设施来动态地提供无处不在的网络覆盖。移动接入点的部署是一个很有希望的解决办法。在本文件中,我们在干扰和机动性的限制下,为动态的网络制定了3DMAP联合部署和用户关联问题。首先,我们提出一个迭代算法,以优化MAP的部署。我们的解决方案高效和迅速地决定高动态情景的MAP的数量、位置和配置。MAP为以毫米波或亚-6GHz波段的移动地面用户提供了适当的服务质量(QOS)连接,并在3D网格中找到他们的最佳位置。每个MAP还意味着要尽量减少能源成本(例如旅行费用)。一旦所有MAP部署后,将提出一个深度的多试剂强化学习算法,将多个用户与多个受干扰制约的MAP联系起来。每个用户都作为独立代理,在完全分布的架构下运作,并尽可能扩大网络总和率。