The advantage of computational resources in edge computing near the data source has kindled growing interest in delay-sensitive Internet of Things (IoT) applications. However, the benefit of the edge server is limited by the uploading and downloading links between end-users and edge servers when these end-users seek computational resources from edge servers. The scenario becomes more severe when the user-end's devices are in the shaded region resulting in low uplink/downlink quality. In this paper, we consider a reconfigurable intelligent surface (RIS)-assisted edge computing system, where the benefits of RIS are exploited to improve the uploading transmission rate. We further aim to minimize the delay of worst-case in the network when the end-users either compute task data in their local CPU or offload task data to the edge server. Next, we optimize the uploading bandwidth allocation for every end-user's task data to minimize the maximum delay in the network. The above optimization problem is formulated as quadratically constrained quadratic programming. Afterward, we solve this problem by semidefinite relaxation. Finally, the simulation results demonstrate that the proposed strategy is scalable under various network settings.
翻译:在数据源附近进行边缘计算时,计算资源的优势激发了人们对延迟敏感的Things(IoT)应用程序互联网的兴趣。然而,当终端用户从边缘服务器上寻求计算资源时,边缘服务器的优势因终端用户和边缘服务器之间的上传和下载链接而受到限制。当用户的终端设备位于阴影区域,导致低上行/下行链路质量降低时,这种情景变得更加严重。在本文中,我们认为可重新配置智能表面(RIS)辅助边缘计算机系统,利用RIS的好处来改进上传传输率。我们进一步力求将终端用户在本地 CPU 中配置任务数据或将任务数据卸载到边缘服务器时,网络中最坏情况的延迟最小化。接下来,我们优化了每个终端用户任务数据的上传带宽度分配,以最大限度地减少网络的最大延迟。以上优化问题被表述为二次受限的二次调整程序。随后,我们通过半二次松动来解决这个问题。最后,模拟结果显示,在网络设置下拟议的战略是可缩的。