The performance of mobile edge computing (MEC) depends critically on the quality of the wireless channels. From this viewpoint, the recently advocated intelligent reflecting surface (IRS) technique that can proactively reconfigure wireless channels is anticipated to bring unprecedented performance gain to MEC. In this paper, the problem of network throughput optimization of an IRS-assisted multi-hop MEC network is investigated, in which the phase-shifts of the IRS and the resource allocation of the relays need to be jointly optimized. However, due to the coupling among the transmission links of different hops caused by the utilization of the IRS and the complicated multi-hop network topology, it is difficult to solve the considered problem by directly applying existing optimization techniques. Fortunately, by exploiting the underlying structure of the network topology and spectral graph theory, it is shown that the network throughput can be well approximated by the second smallest eigenvalue of the network Laplacian matrix. This key finding allows us to develop an effective iterative algorithm for solving the considered problem. Numerical simulations are performed to corroborate the effectiveness of the proposed scheme.
翻译:移动边缘计算(MEC)的性能主要取决于无线频道的质量。 从这个角度看,最近倡导的智能反射表面技术(IRS)能够积极主动地重新配置无线频道,预计将给MEC带来前所未有的性能收益。 在本文中,对IRS协助的多光速多光速MEC网络网络的网络通过量优化优化的问题进行了调查,其中IRS的阶段性转移和转发器的资源分配需要共同优化。然而,由于利用IRS和复杂的多光速网络地形学导致不同传输链路的连接,因此很难通过直接应用现有的优化技术来解决所考虑的问题。幸运的是,通过利用网络表层学和光谱图理论的基本结构,可以证明网络的能量通过量完全近似于Laplacian 矩阵的第二小值。这一关键发现使我们能够开发有效的迭代算算法来解决所考虑的问题。做了数字模拟,以证实拟议方案的有效性。