Over-the-air computation (AirComp) is a disruptive technique for fast wireless data aggregation in Internet of Things (IoT) networks via exploiting the waveform superposition property of multiple-access channels. However, the performance of AirComp is bottlenecked by the worst channel condition among all links between the IoT devices and the access point. In this paper, a reconfigurable intelligent surface (RIS) assisted AirComp system is proposed to boost the received signal power and thus mitigate the performance bottleneck by reconfiguring the propagation channels. With an objective to minimize the AirComp distortion, we propose a joint design of AirComp transceivers and RIS phase-shifts, which however turns out to be a highly intractable non-convex programming problem. To this end, we develop a novel alternating minimization framework in conjunction with the successive convex approximation technique, which is proved to converge monotonically. To reduce the computational complexity, we transform the subproblem in each alternation as a smooth convex-concave saddle point problem, which is then tackled by proposing a Mirror-Prox method that only involves a sequence of closed-form updates. Simulations show that the computation time of the proposed algorithm can be two orders of magnitude smaller than that of the state-of-the-art algorithms, while achieving a similar distortion performance.
翻译:超天计算( AirComp) 是一种干扰技术,通过利用多个接入频道的波形叠加特性,在Things(IoT) 互联网网络中快速无线数据汇总技术(AirComp) 。 然而, AirComp 的性能受到IoT 设备与接入点之间所有连接中最坏的频道条件的阻碍。 在本文中, 推荐一个可重新配置的智能表面(RIS) 辅助 AirComp 系统, 以提升接收信号能量, 从而通过重新配置传播频道来减轻性能瓶颈。 为了尽量减少AirComp 扭曲, 我们提议联合设计一个 AirComp Transic 传输器和 RIS 相位转换器, 但结果显示这是一个非常棘手的非convex 程序配置问题。 为此, 我们开发了一个新颖的最小化框架, 与连续的 convex 逼近技术一起, 被证明是单调的。 为了降低计算的复杂性, 我们将每个变换的子标的节点转换为平滑的连接点,, 然后通过提出一个镜序-Prox 系统的变换算方法来解决, 来解决这个问题, 。