In this paper, the problem of joint communication and sensing is studied in the context of terahertz (THz) vehicular networks. In the studied model, a set of service provider vehicles (SPVs) provide either communication service or sensing service to target vehicles, where it is essential to determine 1) the service mode (i.e., providing either communication or sensing service) for each SPV and 2) the subset of target vehicles that each SPV will serve. The problem is formulated as an optimization problem aiming to maximize the sum of the data rates of the communication target vehicles, while satisfying the sensing service requirements of the sensing target vehicles, by determining the service mode and the target vehicle association for each SPV. To solve this problem, a graph neural network (GNN) based algorithm with a heterogeneous graph representation is proposed. The proposed algorithm enables the central controller to extract each vehicle's graph information related to its location, connection, and communication interference. Using this extracted graph information, a joint service mode selection and target vehicle association strategy is then determined to adapt to the dynamic vehicle topology with various vehicle types (e.g., target vehicles and service provider vehicles). Simulation results show that the proposed GNN-based scheme can achieve 93.66% of the sum rate achieved by the optimal solution, and yield up to 3.16% and 31.86% improvements in sum rate, respectively, over a homogeneous GNN-based algorithm and a conventional optimization algorithm without using GNNs.
翻译:在本文中,对联合通信和遥感问题进行了研究,研究范围为Thahertz(Thz)的通信和遥感网络;在研究的模型中,一套服务供应商车辆(SPV)向目标车辆提供通信服务或遥感服务,对于确定1个服务模式(即提供通信或遥感服务)至关重要,对于每个SPV和2个目标车辆而言,必须确定1个服务模式(即提供通信或遥感服务),每个SPV将使用的一组目标车辆;将问题确定为一个优化问题,目的是最大限度地平衡通信目标车辆的数据率,同时通过确定每个SPV的服务模式和目标车辆协会满足感测服务要求;为每个SPV确定服务模式和目标车辆协会。为解决这一问题,提议了一个基于图表的神经网络(GNNN)算法,以混合图形代表方式显示,中央控制者能够提取与每个车辆的位置、连接和通信干扰有关的图表信息。然后,决定采用一种基于联合服务模式选择和目标车辆关联战略,以适应各种车辆类型的动态车辆地形(例如,目标车辆和稳定的车辆比例分别为G-93,Simulational 和Simulational SAumal supal supal supal =G)的系统可实现拟议总总比例。