计算机科学
移动边缘计算
强化学习
供应
杠杆(统计)
分布式计算
带宽(计算)
计算机网络
边缘设备
带宽分配
调度(生产过程)
移动服务
人工智能
服务器
服务(商务)
云计算
运营管理
经济
经济
操作系统
作者
Ruirui Zhang,Zhenzhen Xie,Dongxiao Yu,Weifa Liang,Xiuzhen Cheng
标识
DOI:10.1109/tc.2023.3337317
摘要
Federated Learning (FL) offers collaborative machine learning without data exposure, but challenges arise in the mobile edge network (MEC) environment due to limited resources and dynamic conditions. This paper presents a Digital Twin (DT)-assisted FL platform for MEC networks and introduces a novel multi-FL service framework to address resource dynamics and mobile users. We leverage DT models to optimize device scheduling and MEC resource allocation, aiming to maximize utility across FL services. Our work includes heuristic and constant approximation algorithms for offline multi-FL service scenarios and we also investigate an online setting of our solution with dynamic bandwidth and moving client conditions. To adapt to changing network conditions, we utilize historical bandwidth data in DTs and implement a deep reinforcement learning algorithm, Ra_DDPG, for automatic bandwidth allocation. Evaluation results demonstrate a significant 49.8% increase in system utility compared to a benchmark algorithm, showcasing the effectiveness of our approach.
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