Key Laboratory of Data Storage and Transmission Technology of Zhejiang Province, Institute of Communications Engineering, Hangzhou Dianzi University, Hangzhou 310018, China.
Information Engineering School, Hangzhou Dianzi University, Hangzhou 310018, China.
Sensors (Basel). 2023 Jun 1;23(11):5266. doi: 10.3390/s23115266.
Device-to-device (D2D) communication is a promising wireless communication technology which can effectively reduce the traffic load of the base station and improve the spectral efficiency. The application of intelligent reflective surfaces (IRS) in D2D communication systems can further improve the throughput, but the problem of interference suppression becomes more complex and challenging due to the introduction of new links. Therefore, how to perform effective and low-complexity optimal radio resource allocation is still a problem to be solved in IRS-assisted D2D communication systems. To this end, a low-complexity power and phase shift joint optimization algorithm based on particle swarm optimization is proposed in this paper. First, a multivariable joint optimization problem for the uplink cellular network with IRS-assisted D2D communication is established, where multiple DUEs are allowed to share a CUE's sub-channel. However, the proposed problem considering the joint optimization of power and phase shift, with the objective of maximizing the system sum rate and the constraints of the minimum user signal-to-interference-plus-noise ratio (SINR), is a non-convex non-linear model and is hard to solve. Different from the existing work, instead of decomposing this optimization problem into two sub-problems and optimizing the two variables separately, we jointly optimize them based on Particle Swarm Optimization (PSO). Then, a fitness function with a penalty term is established, and a penalty value priority update scheme is designed for discrete phase shift optimization variables and continuous power optimization variables. Finally, the performance analysis and simulation results show that the proposed algorithm is close to the iterative algorithm in terms of sum rate, but lower in power consumption. In particular, when the number of D2D users is four, the power consumption is reduced by 20%. In addition, compared with PSO and distributed PSO, the sum rate of the proposed algorithm increases by about 10.2% and 38.3%, respectively, when the number of D2D users is four.
设备到设备(D2D)通信是一种很有前途的无线通信技术,它可以有效地降低基站的业务量并提高频谱效率。智能反射面(IRS)在 D2D 通信系统中的应用可以进一步提高吞吐量,但由于引入了新的链路,干扰抑制问题变得更加复杂和具有挑战性。因此,如何进行有效的低复杂度最优无线电资源分配仍然是 IRS 辅助 D2D 通信系统中需要解决的问题。为此,本文提出了一种基于粒子群优化的低复杂度功率和相位联合优化算法。首先,建立了一个具有 IRS 辅助 D2D 通信的上行蜂窝网络的多变量联合优化问题,其中允许多个 DUE 共享 CUE 的子信道。然而,考虑到功率和相位联合优化的所提出的问题,以最大化系统和速率和满足最小用户信干噪比(SINR)的约束为目标,是一个非凸非线性模型,很难求解。与现有工作不同的是,我们不是将此优化问题分解为两个子问题并分别优化两个变量,而是基于粒子群优化(PSO)联合优化它们。然后,建立了一个带有罚项的适应度函数,并为离散相位优化变量和连续功率优化变量设计了一个罚值优先更新方案。最后,性能分析和仿真结果表明,该算法在和速率方面接近迭代算法,但在功耗方面较低。特别是,当 D2D 用户数量为 4 时,功率消耗降低了 20%。此外,与 PSO 和分布式 PSO 相比,当 D2D 用户数量为 4 时,所提出算法的和速率分别增加了约 10.2%和 38.3%。