智能电网用户侧的超密集边缘计算网络卸载方法
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作者单位:

1.福建商学院信息工程学院,福建 福州 350012;2.福建师范大学物理与能源学院,福建 福州 350108

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福建省自然科学基金委员会面上项目(2019J01286;2022J01961);福建省自然科学基金委员会重点项目(2020H0012);福建省教育厅中青年科研项目(JAS21173)。


Offloading Method of Ultra-Dense Edge Computing Network on the User Side of Smart Grid
Author:
Affiliation:

1.School of Information Engineering,Fujian Business University,Fuzhou,Fujian 350012,China;2.School of Physics and Energy,Fujian Normal University,Fuzhou,Fujian 350000,China

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    摘要:

    随着中国经济的飞速发展,日益增长的居民用电需求和不断增加的用电设备类型使得新型智能电网设备的可靠性、稳定性受到广泛关注,然而仅依靠传统单一的网络架构往往无法应对大规模电网设备的数据请求。首先,针对智能电网用户侧的任务请求,提出一种超密集边缘计算网络下的成本优化模型;其次,考虑到通信资源和计算资源的价格对卸载策略的影响,将资源利用成本作为优化目标;最后,为了提高电网设备请求的服务质量,考虑能耗和时延约束的任务卸载策略,提出莱维飞行-蜉蝣粒子群优化(Lévy flight- Mayfly Particle Swarm Optimization,Lévy-MAPSO)算法。结果表明:不同价格对资源利用成本的影响十分显著。与PSO和Lévy-MA算法相比,Lévy-MAPSO算法由于其群体多样性和强大的搜索能力,所得到的资源利用成本最低,性能最好。

    Abstract:

    With the rapid development of China''s economy,the rising residential electricity demand and the increasing varieties of electrical equipment have made the reliability and stability of the new smart grid equipment widely concerned. However,relying solely on the traditional single network architecture often fails to answer the data requests of large-scale grid equipment. To this end,this paper first proposes a cost optimizing model under ultra-dense edge computing networks in regard to the request from the smart grid user side;secondly,considering the influence of the price of communication resources and computing resources on the offloading strategy, the resource utilization cost is taken as an optimizing objective; finally,in order to improve the service quality requested by power grid equipment,considering the task offloading strategy of energy consumption and delay constraints,a Lévy flight-Mayfly Particle Swarm Optimization (Lévy-MAPSO) algorithm is proposed. The experimental results show that different prices have a significant impact on the resource utilization cost. Compared with PSO and Lévy-MA algorithms,Lévy-MAPSO algorithm has the lowest resource utilization cost and the best performance thanks to its population diversity and powerful searching ability.

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邱文海.智能电网用户侧的超密集边缘计算网络卸载方法[J].西昌学院学报(自然科学版),2023,37(2):73-81.

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  • 收稿日期:2023-03-07
  • 最后修改日期:2023-03-07
  • 录用日期:2023-04-12
  • 在线发布日期: 2023-07-25