Energy Efficient Dynamic Task Offloading for Blockchain-enabled Virtual Wireless Networks

Amani Alshaikhi, D. Rawat
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Abstract

The application of the blockchain technology in various fields has continued to grow exponentially. Besides, task offloading schemes are essential in the lessening of the quantity of consumed energy. These schemes are also needed for workload rate of systems during the transfer of tasks to the execution phase in the cloud or edge. Based on the need for a dynamic task offloading and allocation of resources for virtual wireless networks (VWNs), we have proposed an energy efficient dynamic task offloading scheme in VWNs that leverages the blockchain technology. The proposed approach chooses the online optimal computing place either on the mobile cloud computing (MCC) server or the mobile edge computing (MEC) server with the goal of reducing task response time and energy consumption. Communication and computation costs incurred by different kinds of applications are controlled by the Lyapunov optimization technique. Computing location for each task is chosen adaptively during the optimization without requiring extensive system information. Energy efficient approach achieves better offloading decisions with lower computational complexity as compared with traditional offloading techniques.
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支持区块链的虚拟无线网络的节能动态任务卸载
区块链技术在各个领域的应用持续呈指数级增长。此外,任务卸载方案在减少消耗的能量方面是必不可少的。在将任务转移到云或边缘的执行阶段期间,系统的工作负载率也需要这些方案。基于虚拟无线网络(VWNs)对动态任务卸载和资源分配的需求,我们提出了一种利用区块链技术的虚拟无线网络节能动态任务卸载方案。该方法在移动云计算(MCC)服务器或移动边缘计算(MEC)服务器上选择在线最优计算位置,以减少任务响应时间和能耗。通过李亚普诺夫优化技术控制不同类型应用的通信和计算成本。在优化过程中自适应地选择每个任务的计算位置,而不需要大量的系统信息。与传统的卸载技术相比,节能方法能够以更低的计算复杂度实现更好的卸载决策。
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