School of Information and Electrical Engineering, Hebei University of Engineering, Handan 056038, China.
Chongqing Engineering Research Center of Intelligent Sensing Technology and Microsystem, Chongqing 400065, China.
Sensors (Basel). 2023 Mar 10;23(6):3005. doi: 10.3390/s23063005.
Sixth generation (6G) wireless networks require very low latency and an ultra-high data rate, which have become the main challenges for future wireless communications. To effectively balance the requirements of 6G and the extreme shortage of capacity within the existing wireless networks, sensing-assisted communications in the terahertz (THz) band with unmanned aerial vehicles (UAVs) is proposed. In this scenario, the THz-UAV acts as an aerial base station to provide information on users and sensing signals and detect the THz channel to assist UAV communication. However, communication and sensing signals that use the same resources can cause interference with each other. Therefore, we research a cooperative method of co-existence between sensing and communication signals in the same frequency and time allocation to reduce the interference. We then formulate an optimization problem to minimize the total delay by jointly optimizing the UAV trajectory, frequency association, and transmission power of each user. The resulting problem is a non-convex and mixed integer optimization problem, which is challenging to solve. By resorting to the Lagrange multiplier and proximal policy optimization (PPO) method, we propose an overall alternating optimization algorithm to solve this problem in an iterative way. Specifically, given the UAV location and frequency, the sub-problem of the sensing and communication transmission powers is transformed into a convex problem, which is solved by the Lagrange multiplier method. Second, in each iteration, for given sensing and communication transmission powers, we relax the discrete variable to a continuous variable and use the PPO algorithm to tackle the sub-problem of joint optimization of the UAV location and frequency. The results show that the proposed algorithm reduces the delay and improves the transmission rate when compared with the conventional greedy algorithm.
第六代(6G)无线网络需要非常低的延迟和超高的数据速率,这已成为未来无线通信的主要挑战。为了有效平衡 6G 的要求和现有无线网络中容量的极度短缺,提出了使用无人机(UAV)在太赫兹(THz)频段进行感测辅助通信。在这种情况下,THz-UAV 充当空中基站,提供有关用户和感测信号的信息,并检测 THz 信道以辅助 UAV 通信。但是,使用相同资源的通信和感测信号会相互干扰。因此,我们研究了在相同的频率和时间分配中感测和通信信号共存的协作方法,以减少干扰。然后,我们制定了一个优化问题,通过联合优化无人机轨迹、频率关联和每个用户的传输功率,来最小化总延迟。由此产生的问题是非凸的混合整数优化问题,难以解决。通过诉诸拉格朗日乘子和近端策略优化(PPO)方法,我们提出了一种整体交替优化算法,以迭代方式解决此问题。具体来说,给定无人机的位置和频率,感测和通信传输功率的子问题被转换为凸问题,通过拉格朗日乘子方法求解。其次,在每次迭代中,对于给定的感测和通信传输功率,我们将离散变量松弛到连续变量,并使用 PPO 算法解决无人机位置和频率联合优化的子问题。结果表明,与传统的贪婪算法相比,所提出的算法降低了延迟并提高了传输速率。