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一种改善MEC网络切片QoS的双层闭环协同资源分配框架

徐骏涛 范兴刚 徐常福 沈民扬 梁玉珠 王田

徐骏涛, 范兴刚, 徐常福, 沈民扬, 梁玉珠, 王田. 一种改善MEC网络切片QoS的双层闭环协同资源分配框架[J]. 电子与信息学报. doi: 10.11999/JEIT260156
引用本文: 徐骏涛, 范兴刚, 徐常福, 沈民扬, 梁玉珠, 王田. 一种改善MEC网络切片QoS的双层闭环协同资源分配框架[J]. 电子与信息学报. doi: 10.11999/JEIT260156
XU Juntao, FAN Xinggang, XU Changfu, SHEN Minyang, LIANG Yuzhu, WANG Tian. A Two-Layer Closed-loop Cooperative Resource Allocation Framework for Improving QoS of MEC Network Slicing[J]. Journal of Electronics & Information Technology. doi: 10.11999/JEIT260156
Citation: XU Juntao, FAN Xinggang, XU Changfu, SHEN Minyang, LIANG Yuzhu, WANG Tian. A Two-Layer Closed-loop Cooperative Resource Allocation Framework for Improving QoS of MEC Network Slicing[J]. Journal of Electronics & Information Technology. doi: 10.11999/JEIT260156

一种改善MEC网络切片QoS的双层闭环协同资源分配框架

doi: 10.11999/JEIT260156 cstr: 32379.14.JEIT260156
基金项目: 国家自然科学基金联合重点基金(U25A20436),浙江省‘尖兵’‘领雁’研发攻关计划资助(No.2025C01054),山东省重点研发计划(2025TSGCCZZB0026)
详细信息
    作者简介:

    徐骏涛:男,硕士生,研究方向为为5G,移动计算和边缘计算

    范兴刚:男,教授,研究方向为物联网,边缘计算

    徐常福:男,博士,研究方向为边缘计算,AIGC

    沈民扬:男,硕士生,研究方向为物联网,边缘计算

    梁玉珠:男,博士,研究方向为边缘计算,移动计算和人工智能

    王田:男,教授,研究方向为物联网,边缘计算和移动计算

    通讯作者:

    范兴刚 xgfan@zjut.edu.cn

  • 中图分类号: TP393

A Two-Layer Closed-loop Cooperative Resource Allocation Framework for Improving QoS of MEC Network Slicing

Funds: National Natural Science Foundation of China (U25A20436), “Pioneer” and “Leading Goose” R&D Program of Zhejiang (No.2025C01054), Shandong Provincial Key R&D Program (2025TSGCCZZB0026)
  • 摘要: 在5G/6G驱动的多接入边缘计算(MEC)环境中,提高资源利用率的同时,确保异构网络切片的服务质量(QoS)具有重要意义。然而,当前方法在异构环境下缺乏动态适应性,无法协同优化缓存、带宽和计算资源,存在资源利用率下降、服务成功率下降等问题。本文首先形式化定义了网络切片资源分配问题,并通过将多维0-1背包问题归约到该问题来证明其是NP-难问题。然后提出了一种具有缓存感知的双层闭环协同资源分配框架,上层构建一种群体协同的全局搜索机制,通过候选解演化、历史最优引导与自适应参数调整,在复杂约束条件下生成高质量资源候选分配方案,下层构建一个多维权重评估模型以准确将低延迟、高带宽的服务需求指标转化为QoS约束,通过上下双层闭环协同实现缓存、带宽和计算资源的联合优化,进而改善了异构网络切片的QoS。大量实验表明,与基线方法相比,所提方法使资源利用率提升了2.29%到24.50%,用户评分提升了4.13%到59.34%,为异构MEC环境提供了一种鲁棒的资源分配解决方案。
  • 图  1  支持MEC的网络切片体系结构图

    图  2  双层闭环协同优化框架示意图。上层全局探索层融合全局候选解演化思想与基于历史最优引导的粒子更新机制来解决复杂的、NP难的网络切片资源分配优化问题。下层是多维权重评估层,通过使用熵权方法实时调整不同切片类型的优先级来动态平衡冲突目标。

    图  3  相同场景下各方案总体比较

    图  4  总缓存资源变化下各方案比较

    图  5  总用户数量变化下各方案比较

    图  6  用户需求变化下各方案比较

    1  缓存资源分配计算算法

     输入:用户需求集REQ,基站缓存集CACHE,切片资源配置集
     SLICE;
     输出:基站缓存资源最优分配集UPDATE。
     ① 使用随机资源分配策略初始化种群$ pop $,初始化种群
     $ fitness $、个体最优$ pbest $和种群最优$ gbest $的适应度以及基站的
     缓存策略$ UPDATE $;
     ② for 种群的每次迭代 do
     ③ 基于多维权重模型计算个体的$ fitness $;
     ④ 更新$ pbest $和$ gbest $;
     ⑤ 基于$ fitness $从大到小对$ pop $进行排序;
     ⑥ 选择$ pop $小于精英比例的部分为$ pop1 $,其余部分为$ pop2 $;
     ⑦ 对$ pop1 $执行锦标赛选择、单点交叉和高斯变异操作,对
     $ pop2 $执行更新位置和速度操作;
     ⑧ end for
     ⑨ 基于多维权重模型计算每个个体$ fitness $;
     ⑩ 输出缓存分配最适合的策略$ UPDATE $。
    下载: 导出CSV

    2  多维度权重评估计算算法

     输入:用户需求UREQ,用户与基站的距离DIS,用户数据包
     PACK,基站缓存状态STATE,切片给用户分配的资源配置集
     RES;
     输出:用户的综合评分SCORE。
     ① 根据公式(4)计算$ SINR $,根据公式(7)和(8)计算$ rate $,根据
     公式(11)计算$ delay $;
     ② if 所需数据没有在基站中缓存
     ③ delay需根据公式(14)加上额外的时延;
     ④ end if
     ⑤ 归一化速率$ rate $和时延$ delay $等属性;
     ⑥ 计算各属性的信息熵;
     ⑦ 计算各属性的冗余度;
     ⑧ 输出每个指标加权后的分数SCORE。
    下载: 导出CSV

    表  1  [17][29] 仿真参数

    参数名称参数取值
    切片数量4
    总带宽资源75 MHz
    总计算资源150 GHz
    总缓存资源75 GB
    每个切片分配的带宽资源[0,75] MHz
    每个切片分配的计算资源[0,150] GHz
    每个切片分配的缓存资源[0,75] GB
    数据包大小[5,125] MB
    数据缓存标识$ {x}_{s,l,u,t} $0,1
    最大计算卸载延时[0.02,0.2] s
    最大内容传输延时[0.5,5] s
    回程链路传输速率[50,200] Mbps
    下载: 导出CSV
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出版历程
  • 收稿日期:  2026-02-06
  • 修回日期:  2026-04-12
  • 录用日期:  2026-06-18
  • 网络出版日期:  2026-06-30

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