基于智能反射面和大规模MIMO中继的多层任务卸载

Kunlun Wang, Yong Zhou, Qingqing Wu, Wen Hua Chen, Yang Yang
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引用次数: 1

摘要

本文研究了智能反射面(IRS)和大规模多输入多输出(MIMO)中继辅助雾计算混合系统中的任务卸载问题,其中多个任务节点(TNs)通过IRS将其计算任务卸载到大规模MIMO中继节点(MRN)和雾访问节点(FAN)附近的计算节点(CNs)执行。考虑到实际的不完全信道状态信息(CSI)模型,提出了一种联合任务卸载、IRS相移优化和功率分配问题,以最小化总能耗。我们分三步解决由此产生的非凸优化问题。首先,我们用半定松弛(SDR)算法解决了IRS相移优化问题。然后,我们利用微分凸(DC)优化框架来确定功率分配决策。考虑到IRS相移、计算资源和功率分配,我们提出了一种交替优化算法来寻找联合优化结果。仿真结果证明了该方案与其他基准方案的有效性。
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Multi-Tier Task Offloading with Intelligent Reflecting Surface and Massive MIMO Relay
This paper investigates the task offloading problem in a hybrid intelligent reflecting surface (IRS) and massive multiple-input multiple-output (MIMO) relay assisted fog computing system, where multiple task nodes (TNs) offload their computational tasks to computing nodes (CNs) nearby massive MIMO relay node (MRN) and fog access node (FAN) via the IRS for execution. By considering the practical imperfect channel state information (CSI) model, we formulate a joint task offloading, IRS phase shift optimization, and power allocation problem to minimize the total energy consumption. We solve the resultant non-convex optimization problem in three steps. First, we solve the IRS phase shift optimization problem with the semidefinite relaxation (SDR) algorithm. Then, we exploit a differential convex (DC) optimization framework to determine the power allocation decision. Given the IRS phase shifts, the computational resources, and the power allocation, we propose an alternating optimization algorithm for finding the jointly optimized results. The simulation results demonstrate the effectiveness of the proposed scheme as compared with other benchmark schemes.
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