The advent of Reconfigurable Intelligent Surfaces (RISs) in wireless communication networks unlocks the way to support high frequency radio access (e.g. in millimeter wave) while overcoming their sensitivity to the presence of deep fading and blockages. In support of this vision, this work exhibits the forward-looking perception of using RIS to enhance the connectivity of the communication links in edge computing scenarios, to support computation offloading services. We consider a multi-user MIMO system, and we formulate a long-term optimization problem aiming to ensure a bounded end-to-end delay with the minimum users average transmit power, by jointly selecting uplink user precoding, RIS reflectivity parameters, and computation resources at a mobile edge host. Thanks to the marriage of Lyapunov stochastic optimization, projected gradient techniques and convex optimization, the problem is efficiently solved in a per-slot basis, requiring only the observation of instantaneous realizations of time-varying radio channels and task arrivals, and that of communication and computing buffers. Numerical simulations show the effectiveness of our method and the benefits of the RIS, in striking the best trade-off between power consumption and delay for different blocking conditions, also when different levels of channel knowledge are assumed.
翻译:在无线通信网络中重新配置的智能表面(RIS)的出现为支持高频无线电接入(例如毫米波)打开了支持高频无线电接入的途径(例如毫米波),同时克服其对深度衰减和阻塞的敏感度。为支持这一愿景,这项工作展示了利用RIS加强边缘计算情景中通信连接的前瞻性看法,支持计算卸载服务。我们考虑的是多用户MIMO系统,我们制定了一个长期优化问题,以确保与最低用户平均传输动力的封闭式端对端延迟,共同选择上链用户预译、反光度参数和移动边缘宿主的计算资源。由于Lyapunov蒸馏优化、预测梯度技术和convex优化的结合,这一问题在每次计价的基础上得到有效解决,只需要观察时间变化式无线电频道和任务到达以及通信和计算缓冲的瞬间实现情况。数字模拟显示我们的方法的有效性,同时在最大程度上抑制了电路的延迟度,同时打击了不同水平的贸易。