Latency and Reliability Aware Edge Computation Offloading via an Intelligent Reflecting Surface

Autor: Chadi Assi, Elie El Haber, Kim Khoa Nguyen, Mohamed Elhattab, Sanaa Sharafeddine
Rok vydání: 2021
Předmět:
Zdroj: IEEE Communications Letters. 25:3947-3951
ISSN: 2373-7891
1089-7798
DOI: 10.1109/lcomm.2021.3118341
Popis: Despite the advantages of multi-access edge computing in enabling latency-sensitive services and extending the limited computing capabilities of network devices, access communication issues are still often causing the quality of the wireless channels to be severely degraded, preventing the edge resources from being efficiently utilized. Through the deployment of low-cost passive reflecting elements, the recent studies of intelligent reflecting surfaces (IRSs) in wireless networks have shown a great potential for enhancing the quality of the wireless channels and the transmission rates. In this work, motivated by the recent findings, we study the use of an IRS-aided edge computing system for enabling low latency and high reliability computation offloading in the context of a single-user network. Specifically, we optimize the phase shift of the IRS elements along with the device’s transmit power and offloading decision, with the objective of minimizing the device’s energy consumption. Due to the non-convexity of the problem, we propose a customized sub-optimal solution based on the alternating optimization approach, utilizing novel successive convex approximation techniques. Numerical analysis demonstrates the energy reduction and saving in network resources provided by the optimized use of the IRS, especially for offloading services with higher reliability.
Databáze: OpenAIRE