ITAIJan 22, 2024

Computation Rate Maximization for Wireless Powered Edge Computing With Multi-User Cooperation

arXiv:2402.16866v116 citationsh-index: 7IEEE Open J Commun Soc
Originality Incremental advance
AI Analysis

This work addresses energy and computation efficiency for IoT devices in edge networks, presenting an incremental improvement through dynamic collaboration and optimization.

The study tackled the problem of maximizing computation rates in a wireless-powered mobile edge computing system with IoT devices by proposing a multi-user cooperation scheme, achieving performance comparable to exhaustive search and significantly reducing execution time with a deep learning-based algorithm.

The combination of mobile edge computing (MEC) and radio frequency-based wireless power transfer (WPT) presents a promising technique for providing sustainable energy supply and computing services at the network edge. This study considers a wireless-powered mobile edge computing system that includes a hybrid access point (HAP) equipped with a computing unit and multiple Internet of Things (IoT) devices. In particular, we propose a novel muti-user cooperation scheme to improve computation performance, where collaborative clusters are dynamically formed. Each collaborative cluster comprises a source device (SD) and an auxiliary device (AD), where the SD can partition the computation task into various segments for local processing, offloading to the HAP, and remote execution by the AD with the assistance of the HAP. Specifically, we aims to maximize the weighted sum computation rate (WSCR) of all the IoT devices in the network. This involves jointly optimizing collaboration, time and data allocation among multiple IoT devices and the HAP, while considering the energy causality property and the minimum data processing requirement of each device. Initially, an optimization algorithm based on the interior-point method is designed for time and data allocation. Subsequently, a priority-based iterative algorithm is developed to search for a near-optimal solution to the multi-user collaboration scheme. Finally, a deep learning-based approach is devised to further accelerate the algorithm's operation, building upon the initial two algorithms. Simulation results show that the performance of the proposed algorithms is comparable to that of the exhaustive search method, and the deep learning-based algorithm significantly reduces the execution time of the algorithm.

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