低压变压器局域网络边缘计算任务调度算法研究

Tian Lan, R. Liu, Shixiong Gong, Bin Li, Bing Qi
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引用次数: 0

摘要

针对电力物联网边缘计算中的任务调度策略和性能优化问题,为满足低压变压器领域配电精细化和智能化的需求,本文研究了如何有效调度应用,实现任务运行、处理时间、任务延迟和系统性能之间的权衡。考虑到物联网边缘agent在低压变压器区域(LV-TAN)的局部优势,以及低压变压器区域配电域边缘智能计算任务的特点,以及低压变压器区域的物理静态特性,建立了以最小化任务运行时间为目标,同时考虑任务队列的稳定性、平衡性、优先级、提出了一种基于容器调度算法的边缘计算调度策略。该策略将优化问题分解为一系列子问题,并根据队列积压和卸载目标节点的当前状态分配任务,以满足分配低压变压器区域的优化目标,保证系统的稳定性。仿真结果表明,该算法有效地缩短了任务调度时间,提高了CPU利用率,减少了任务处理的抖动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Task Scheduling Algorithm for Edge Computing in Low-voltage transformer the area network
Aiming at the task scheduling strategy and performance optimization problems in the edge computing of the power Internet of Things, to meet the needs of refined and intelligent power distribution in the Low-voltage transformer the area, this paper studies how to effectively schedule applications to achieve task operation, processing time, and task delay And the trade-off between system performance. Taking into account the local advantages of the edge of the Internet of Things agents in the Low-voltage transformer the area(LV-TAN), as well as the characteristics of the edge intelligent computing tasks in the power distribution domain of the Low-voltage transformer the area, and the physical static characteristics of the Low-voltage transformer the area, it is established to minimize task running time as the goal, while considering the stability of the task queue, Balance, priority, and propose a scheduling strategy for edge computing based on container scheduling algorithm. This strategy decomposes the optimization problem into a series of sub-problems, and distributes tasks according to the current status of the queue backlog and unloading target nodes to meet the optimization goals of the distribution Low-voltage transformer the area and ensure the stability of the system. The simulation results show that the algorithm effectively reduces the task scheduling time, increases the CPU utilization rate, and reduces the jitter of task processing.
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