Correlation-Based Device Energy-Efficient Dynamic Multi-Task Offloading for Mobile Edge Computing

Siqi Zhang, N. Yi, Yi Ma
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引用次数: 1

Abstract

Task offloading to mobile edge computing (MEC) has emerged as a key technology to alleviate the computation workloads of mobile devices and decrease service latency for the computation-intensive applications. Device battery consumption is one of the limiting factors needs to be considered during task offloading. In this paper, multi-task offloading strategies have been investigated to improve device energy efficiency. Correlations among tasks in time domain as well as task domain are proposed to be employed to reduce the number of tasks to be transmitted to MEC. Furthermore, a binary decision tree based algorithm is investigated to jointly optimize the mobile device clock frequency, transmission power, structure and number of tasks to be transmitted. MATLAB based simulation is employed to demonstrate the performance of our proposed algorithm. It is observed that the proposed dynamic multi-task offloading strategies can reduce the total energy consumption at device along various transmit power versus noise power point compared with the conventional one.
基于关联的移动边缘计算设备节能动态多任务卸载
任务卸载到移动边缘计算(MEC)已成为减轻移动设备计算工作量和降低计算密集型应用程序服务延迟的关键技术。设备电池消耗是任务卸载过程中需要考虑的限制因素之一。本文研究了多任务卸载策略以提高设备能效。提出了任务域和任务域间的相关性,以减少传输到MEC的任务数量。此外,研究了一种基于二叉决策树的算法,以共同优化移动设备时钟频率、传输功率、传输任务结构和数量。通过MATLAB仿真验证了所提算法的性能。结果表明,与传统的多任务动态卸载策略相比,所提出的多任务动态卸载策略可以降低设备在各个发射功率和噪声功率点上的总能耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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