计算机科学
边缘计算
差别隐私
分布式计算
能源消耗
匹配(统计)
云计算
Blossom算法
任务(项目管理)
信息隐私
GSM演进的增强数据速率
移动边缘计算
强化学习
边缘设备
资源配置
过程(计算)
高效能源利用
计算机网络
延迟(音频)
计算资源
任务分析
计算复杂性理论
大数据
信息敏感性
效用计算
资源(消歧)
资源管理(计算)
普适计算
无线传感器网络
作者
Liyan Sui,Xiaoyan Huang,Ke Zhang,Yin Zhang⋆,Fan Wu,Xin Guan,Shujiang Xu,Yan Zhang
标识
DOI:10.1109/tcc.2025.3614339
摘要
The sixth-generation (6 G) networks aim to achieve ubiquitous intelligent connectivity while ensuring extremely low latency, reducing energy consumption, and enhancing privacy protection. Mobile edge computing (MEC) offers an effective solution to reduce latency and energy consumption by leveraging resources near end devices for task offloading. However, MEC faces significant challenges in meeting the requirements of 6 G networks, including limited computational resources, high mobility, and strict data privacy demands. Efficiently allocating edge resources while preserving privacy has become a critical issue for realizing the objectives of 6 G networks. In this paper, we propose a privacy-preserving edge computing power network (EdgeCPN) model that jointly leverages the computing resources of edge computing nodes and protects sensitive computing power information through differential privacy methods. In addition, we propose a task matching problem that aims to minimize the privacy-budget-weighted energy consumption while ensuring privacy protection and meeting task requirements. We propose a dynamic graph-based multiagent reinforcement learning (MADRL) algorithm to find the optimal strategy for task matching and computing resource allocation with privacy protection. The results show that our proposed task matching model with energy and privacy tradeoffs can minimize the energy consumption in the matching process while ensuring privacy, and the algorithm can find the optimal strategy for task matching efficiently.
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