Modern connected vehicles (CVs) frequently require diverse types of content for mission-critical decision-making and onboard users' entertainment. These contents are required to be fully delivered to the requester CVs within stringent deadlines that the existing radio access technology (RAT) solutions may fail to ensure. Motivated by the above consideration, this paper exploits content caching in vehicular edge networks (VENs) with a software-defined user-centric virtual cell (VC) based RAT solution for delivering the requested contents from a proximity edge server. Moreover, to capture the heterogeneous demands of the CVs, we introduce a preference-popularity tradeoff in their content request model. To that end, we formulate a joint optimization problem for content placement, CV scheduling, VC configuration, VC-CV association and radio resource allocation to minimize long-term content delivery delay. However, the joint problem is highly complex and cannot be solved efficiently in polynomial time. As such, we decompose the original problem into a cache placement problem and a content delivery delay minimization problem given the cache placement policy. We use deep reinforcement learning (DRL) as a learning solution for the first sub-problem. Furthermore, we transform the delay minimization problem into a priority-based weighted sum rate (WSR) maximization problem, which is solved leveraging maximum bipartite matching (MWBM) and a simple linear search algorithm. Our extensive simulation results demonstrate the effectiveness of the proposed method compared to existing baselines in terms of cache hit ratio (CHR), deadline violation and content delivery delay.
翻译:现代连通车辆(CV)经常需要不同种类的内容用于任务关键决策以及机载用户娱乐。这些内容必须在现有无线电访问技术(RAT)解决方案可能无法确保的严格期限内完全交付给提出请求者CV。出于上述考虑,本文利用了由软件定义的用户中心虚拟手机(VC)组成的车辆边缘网络(VVN)中内容的积压,以软件定义的用户中心虚拟手机(VC)为基础,从近距离边缘服务器上交付所要求的内容。此外,为了捕捉CV的不同需求,我们在其内容请求模式中引入了优惠-大众比例交换。为此,我们为内容放置、CVV的进度、VC配置、VC-CV的关联和无线电资源分配制定了一个联合优化问题,以尽量减少长期内容交付延误。然而,共同问题非常复杂,无法在多时高效地解决。因此,我们将原始问题归为缓冲定位问题和内容交付延迟的问题,因为缓冲定位政策,我们引入了首个缓冲定位,在内容请求模式中引入了优惠-广度交易交易交易交易交易权交易权交易中,我们使用一个深度升级的升级方法,以学习最短的缓冲缓冲规则。