Dynamic Computation Offloading for Green Things-Edge-Cloud Computing with Local Caching

Xianzhong Tian, Huixiao Meng, Yanjun Li, Pingting Miao, Pengcheng Xu
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Abstract

With the increasing popularity of the internet of things (IoT) and 5G, emerging things-edge-cloud computing (TEC) paradigm provides a flexible way for execution of delay-sensitive and computation-intensive applications running on the user equipment (UE). By offloading these workloads to the mobile edge computing (MEC) or mobile cloud computing (MCC) server, the quality of experience, e.g., the execution delay, could be greatly improved. Nevertheless, conventional battery-powered devices face the challenge of battery exhaustion for task offloading. Using renewable energy via energy harvesting (EH) technologies has become a promising way to power these devices. In this paper, we investigate a multi-user green TEC system with EH UEs, each has a task buffer with limited capacity. A joint offloading decision and resource allocation problem is formulated, which addresses the long-term average execution delay, the task dropping and the long-term average energy cost constraint. A low-complexity online algorithm is proposed leveraging Lyapunov optimization framework and matroid theory, which jointly decides the offloading decision, the MEC server CPU frequencies and the transmit power for computation offloading. A unique advantage of this algorithm is that the decisions depend only on the current system state without requiring distribution information of the arrival tasks, wireless channel state, and EH processes. The implementation of the algorithm only requires to solve a deterministic problem in each time slot. Simulation results show that our proposed algorithm makes a best trade-off between minimizing the long-term average generalized delay and satisfying the long-term average energy cost constraint. Impacts of various parameters on the delay and energy cost performance are also discussed.
动态计算卸载的绿色事物-边缘云计算与本地缓存
随着物联网(IoT)和5G的日益普及,新兴的物边缘云计算(TEC)范式为运行在用户设备(UE)上的延迟敏感和计算密集型应用程序的执行提供了一种灵活的方式。通过将这些工作负载卸载到移动边缘计算(MEC)或移动云计算(MCC)服务器,可以大大提高体验质量,例如执行延迟。然而,传统的电池供电设备面临着任务卸载时电池耗尽的挑战。通过能量收集(EH)技术使用可再生能源已经成为为这些设备供电的一种有前途的方式。本文研究了一个多用户绿色TEC系统,每个系统都有一个有限容量的任务缓冲区。提出了一个联合卸载决策和资源分配问题,解决了长期平均执行延迟、任务下降和长期平均能源成本约束问题。利用Lyapunov优化框架和矩阵理论提出了一种低复杂度的在线算法,该算法共同决定卸载决策、MEC服务器CPU频率和发射功率进行计算卸载。该算法的一个独特优点是决策仅依赖于当前系统状态,而不需要到达任务、无线信道状态和EH进程的分布信息。该算法的实现只需要在每个时隙中求解一个确定性问题。仿真结果表明,该算法在最小化长期平均广义延迟和满足长期平均能量成本约束之间取得了较好的平衡。讨论了各种参数对延迟和能源成本性能的影响。
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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