边缘计算中基于依赖感知的智能建筑任务卸载

Q4 Engineering
Lingzhi Yi, Jianxiong Huang, Wang Yahui, Long Jiao, Luo Bote, Jiangyong Liu
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引用次数: 0

摘要

随着人工智能的快速发展,传统的云计算模型在存储和处理海量原始数据时存在严重的带宽和能耗问题。为了解决这个问题,最近的专利研究了移动边缘计算中智能任务卸载和分配的方法。针对边缘网络中存在的任务延迟和能量消耗问题,建立了DAG(有向无环图)任务卸载模型。同时,采用改进的金枪鱼群算法(MTSO)提高了算法的执行效率。首先,本文整合了(1)任务间依赖关系;(ii)边缘网络计算资源的异质性;(三)边缘网络中无线信道的干扰。为了降低延迟和能耗,提出了DAG任务卸载模型。引导最终用户将其任务/子任务卸载到边缘网络中最合适的服务器上,从而最大限度地减少边缘网络中所有任务的端到端延迟。其次,利用MTSO算法协调子任务之间的依赖关系和优先级,提高执行效率;实验结果表明,当包含子任务的用户数为10时,最终的边缘服务器利用率高达92%。更细粒度的分割方案可以降低任务的平均延迟,提高边缘服务器的利用率。本文提出的方法在保证任务依赖性的前提下,降低了复杂应用的端到端延迟,提高了资源利用率。很好地缓解了云的压力,具有一定的工程应用价值
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Task Offloading of Intelligent Building Based on Dependency-Aware in Edge Computing
With the rapid development of artificial intelligence, the traditional cloud computing model has serious bandwidth and energy consumption problems when storing and processing massive amounts of raw data. To address this problem, recent patents have investigated methods for intelligent task offloading and allocation in mobile edge computing. A Directed Acyclic Graph (DAG) task unloading model is established to reduce the problem of task delay and energy consumption in edge networks. At the same time, the Modified Tuna Swarm Optimization (MTSO) is used to improve the execution efficiency. Firstly, this paper integrates (i) inter-task dependencies; (ii) heterogeneity of computing resources in the edge network; and (iii) interference of wireless channels in the edge network. A DAG task offloading model is developed to reduce latency and energy consumption. The end users are guided to offload their tasks/sub-tasks to the most appropriate servers in the edge network, thus minimizing the end-to-end latency of all tasks in the edge network. Secondly, the MTSO algorithm is used to coordinate the dependencies and priorities of subtasks to improve execution efficiency. The experimental results show that when the number of users including subtasks is 10, the final edge server utilization rate is as high as 92%. A more fine-grained segmentation scheme can reduce the average delay of tasks and improve the utilization rate of edge servers. The approach proposed in this paper reduces the end-to-end latency and improves resource utilization in complex applications under the premise of ensuring task dependency. It well relieves the pressure on the cloud and has certain engineering application value
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来源期刊
Recent Patents on Mechanical Engineering
Recent Patents on Mechanical Engineering Engineering-Mechanical Engineering
CiteScore
0.80
自引率
0.00%
发文量
48
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