4.7 Article

Device vs Edge Computing for Mobile Services: Delay-Aware Decision Making to Minimize Power Consumption

Journal

IEEE TRANSACTIONS ON MOBILE COMPUTING
Volume 20, Issue 12, Pages 3324-3337

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TMC.2020.2999784

Keywords

Delays; Mobile handsets; Resource management; Energy consumption; Power demand; Task analysis; Cloud computing; Offloading; resource allocation; mobile cloud computing; mobile edge computing

Funding

  1. EU Celtic Plus Project SooGREEN Service Oriented Optimization of GREEN mobile networks

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This research investigates the power minimization problem for mobile devices by data offloading in multi-cell multi-user OFDMA mobile edge computing networks. By utilizing proposed algorithms, considerable power savings can be achieved, such as about 60% for large bit stream size compared to local computing baseline.
A promising technique to provide mobile applications with high computation resources is to offload the processing task to the cloud. Utilizing the abundant processing capabilities of the clouds, mobile edge computing enables mobile devices with limited batteries to run resource hungry applications and to save power. However, it is not always true that edge computing consumes less power compared to device computing. It may take more power for the mobile device to transmit a file to the cloud than running the task itself. This paper investigates the power minimization problem for the mobile devices by data offloading in multi-cell multi-user OFDMA mobile edge computing networks. We consider the maximum acceptable delay as QoS metric to be satisfied in our network. We formulate the problem as a mixed integer nonlinear problem which is converted into a convex form using D.C. approximation. To solve the converted optimization problem, we have proposed centralized and distributed algorithms for joint power allocation and channel assignment together with decision-making. Simulation results illustrate that by utilizing the proposed algorithms, considerable power savings can be achieved, e.g., about 60 percent for large bit stream size compared to local computing baseline.

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