Optimal Resource Allocation for Wireless Powered Mobile Edge Computing with Dynamic Task Arrivals
Feng Wang, Hong Xing, and Jie Xu

TL;DR
This paper develops an optimal resource allocation framework for wireless powered MEC systems with dynamic task arrivals, aiming to minimize total energy consumption through joint optimization of energy transfer, local computing, and task offloading over multiple time slots.
Contribution
It introduces a joint offline optimization approach for dynamic task arrivals in wireless powered MEC, providing a structured solution using convex optimization and duality methods.
Findings
Optimal task input-bits increase monotonically over time.
Offloading strategies depend on channel conditions and task load.
Joint design outperforms non-joint schemes.
Abstract
This paper considers a wireless powered multiuser mobile edge computing (MEC) system, where a multi-antenna access point (AP) employs the radio-frequency (RF) signal based wireless power transfer (WPT) to charge a number of distributed users, and each user utilizes the harvested energy to execute computation tasks via local computing and task offloading. We consider the frequency division multiple access (FDMA) protocol to support simultaneous task offloading from multiple users to the AP. Different from previous works that considered one-shot optimization with static task models, we study the joint computation and wireless resource allocation optimization with dynamic task arrivals over a finite time horizon consisting of multiple slots. Under this setup, our objective is to minimize the system energy consumption including the AP's transmission energy and the MEC server's computing…
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Taxonomy
TopicsEnergy Harvesting in Wireless Networks · IoT and Edge/Fog Computing · Age of Information Optimization
