基于能量收集的移动边缘计算系统的d2d辅助计算卸载

Molin Li, Tong Chen, Jiaxin Zeng, Xiaobo Zhou, Keqiu Li, Heng Qi
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引用次数: 3

摘要

在具有能量收集功能的移动边缘计算(MEC)系统中,移动设备可以使用从可再生能源中收集的能量。另一方面,移动设备可以将其计算密集型任务卸载到MEC服务器上,从而进一步节省能源并减少任务执行延迟。然而,收集的能量是不稳定的,移动设备必须确保能量不会耗尽。此外,移动设备与MEC服务器之间的无线信道条件是动态变化的,导致通信延迟不稳定。考虑到能量约束和不稳定的通信延迟,计算卸载的效益有限。在本文中,我们研究了具有能量收集的移动边缘计算系统的d2d辅助计算卸载。在我们的方法中,允许移动设备在其邻居节点的帮助下将其任务卸载到MEC服务器。更具体地说,邻居节点充当中继,帮助移动设备与MEC服务器通信。我们的目标是通过为每个任务选择一个最优的执行策略来最小化任务的平均执行时间,也就是说,是在本地执行任务,还是直接卸载到MEC服务器上,还是在最合适的邻居节点的帮助下卸载到MEC服务器上,或者直接丢弃它。我们提出了一种低复杂度的在线算法,该算法源于基于Lyapunov优化的动态计算卸载(LODCO)算法来解决这一问题。大量的仿真验证了所提出算法的有效性,与原始LODCO算法相比,平均任务执行时间减少了约50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
D2D-Assisted Computation Offloading for Mobile Edge Computing Systems with Energy Harvesting
In mobile edge computing (MEC) systems with energy harvesting, the mobile devices are empowered with the energy that harvested from renewable energy sources. On the other hand, mobile devices can offload their computation-intensive tasks to the MEC server to further save energy and reduce the task execution latency. However, the energy harvested is unstable and the mobile devices have to make sure that the energy should not be run out. Moreover, the wireless channel condition between the mobile device and the MEC server is dynamically changing, leading to unstable communication delay. Considering the energy constraints and unstable communication delay, the benefit of computation offloading is limited. In this paper, we investigate D2D-assisted computation offloading for mobile edge computing systems with energy harvesting. In our method, the mobile device is allowed to offload its tasks to the MEC server with the help of its neighbor node. More Specifically, the neighbor node acts as a relay to help the mobile device to communicate with the MEC server. Our goal is to minimize the average task execution time by selecting an optimal execution strategy for each task, i.e., whether to execute the task locally, or offload it to the MEC server directly, or offload it to the MEC server with the help of the most suitable neighbor node, or just to drop it. We propose a low-complexity online algorithm, which stem from Lyapunov Optimization-based Dynamic Computation Offloading (LODCO) algorithm, to solve this problem. Extensive simulations verified the effectiveness of the proposed algorithm, where the average task execution time is reduced around 50% as compared to that of the original LODCO algorithm.
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