Reconfigurable intelligent surfaces-enabled edge computing: A location-aware task offloading framework

Md Sahabul Hossain, Nafis Irtija, Maria Diamanti, Fisayo Sangoleye, Eirini Eleni Tsiropoulou, Symeon Papavassiliou
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Abstract

In this paper, an energy efficient task offloading mechanism in a Multiaccess Edge Computing (MEC) environment is introduced, based on the principles of contract theory. The technology of Reconfigurable Intelligent Surfaces (RISs) is adopted and serves as the enabler for energy efficient task offloading, from the perspective of location-awareness and improved communication environment. Initially a novel positioning, navigation, and timing solution is designed, based on the RIS technology and an artificial intelligent method that selects a set of RISs to perform the multilateration technique and determine the Internet of Things (IoT) nodes' positions in an efficient and accurate manner is introduced. Being aware of the nodes' positions, a maximization problem of the nodes' sum received signal strength at the MEC server where the nodes offload their computing tasks is formulated and solved, determining each RIS element's optimal phase shifts. Capitalizing on these enhancements, a contract-theoretic task offloading mechanism is devised enabling the MEC server to incentivize the IoT nodes to offload their tasks to it for further processing in an energy efficient manner, while accounting for the improved nodes' communications and computing characteristics. The performance evaluation of the proposed framework is obtained via modeling and simulation under different operation scenarios.
可重构智能曲面边缘计算:位置感知任务卸载框架
在多址边缘计算(MEC)环境下,基于契约理论,提出了一种节能的任务卸载机制。采用可重构智能表面(RISs)技术,从位置感知和改善通信环境的角度实现节能任务卸载。首先,基于RIS技术,设计了一种新的定位、导航和定时解决方案,并介绍了一种人工智能方法,该方法选择一组RIS进行多层技术,以高效准确的方式确定物联网(IoT)节点的位置。在了解节点位置的情况下,制定并解决了MEC服务器上节点接收信号强度总和的最大化问题,节点在MEC服务器上卸载其计算任务,从而确定每个RIS元件的最优相移。利用这些增强功能,设计了一种契约理论任务卸载机制,使MEC服务器能够激励物联网节点将其任务卸载给它,以节能的方式进行进一步处理,同时考虑到改进节点的通信和计算特性。通过不同操作场景下的建模和仿真,得出了所提框架的性能评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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