Terahertz (THz) communications and reconfigurable intelligent surfaces (RISs) have been recently proposed to enable various powerful indoor applications, such as wireless virtual reality (VR). For an efficient servicing of VR users, an efficient THz path allocation solution becomes a necessity. Assuming the RIS component is the most critical one in enabling the service, we investigate the impact of RIS hardware failure on path allocation performance. To this end, we study a THz network that employs THz operated RISs acting as base stations, serving VR users. We propose a Semi-Markov decision Process (SMDP)-based path allocation model to ensure the reliability of THz connection, while maximizing the total long-term expected system reward, considering the system gains, costs of link utilization, and the penalty of RIS failure. The SMDP-based model of the RIS system is formulated by defining the state space, action space, reward model, and transition probability distribution. We propose an optimal iterative algorithm for path allocation that decides the next action at each system state. The results show the average reward and VR service blocking probability under different scenarios and with various VR service arrivals and RIS failure rates, as first step towards feasible VR services over unreliable THz RIS.
翻译:最近提议采用Therertz(THZ)通信和可重新配置的智能表面(RIS),以便能够在室内进行各种强大的应用,例如无线虚拟现实(VR)等。为了有效地为VR用户提供服务,必须采用高效的Thz路径分配解决方案。假设RIS组成部分在提供这项服务方面最为关键,我们调查RIS硬件故障对路径分配性能的影响。为此,我们研究一个Thz网络,利用Thz操作的RIS作为基地站,为VR用户服务。我们提议基于半马尔科夫决定程序(SMDP)的道路分配模式,以确保THz连接的可靠性,同时考虑到系统收益、连接利用成本和RIS失败的处罚,同时尽量扩大预期的全面系统奖励。基于SMDP的RIS系统模型是通过界定国家空间、行动空间、奖励模式和过渡概率分布来拟订的。我们提议一种最佳的迭代算法,用于确定每个系统状态的下一步行动。结果显示平均的奖励和VR服务在不同的假设情景和VRISIA的可靠性服务到达率和各种VR的概率。