Computation Rate Maximization for Wireless Powered Mobile-Edge Computing with Binary Computation Offloading
Suzhi Bi, Ying-Jun Angela Zhang

TL;DR
This paper develops optimization algorithms to maximize the computation rate in wireless powered MEC networks with binary offloading, balancing local computing and offloading to improve efficiency.
Contribution
It introduces a joint optimization framework using ADMM for binary offloading and transmission time allocation, addressing complexity issues in multi-user MEC systems.
Findings
Proposed methods achieve near-optimal performance.
Algorithms outperform benchmark methods.
Efficient for large-scale networks.
Abstract
In this paper, we consider a multi-user mobile edge computing (MEC) network powered by wireless power transfer (WPT), where each energy-harvesting WD follows a binary computation offloading policy, i.e., data set of a task has to be executed as a whole either locally or remotely at the MEC server via task offloading. In particular, we are interested in maximizing the (weighted) sum computation rate of all the WDs in the network by jointly optimizing the individual computing mode selection (i.e., local computing or offloading) and the system transmission time allocation (on WPT and task offloading). The major difficulty lies in the combinatorial nature of multi-user computing mode selection and its strong coupling with transmission time allocation. To tackle this problem, we first consider a decoupled optimization, where we assume that the mode selection is given and propose a simple…
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Taxonomy
TopicsEnergy Harvesting in Wireless Networks · IoT and Edge/Fog Computing · Advanced Wireless Communication Technologies
