论文标题

数字双胞胎授权6G网络中的低延迟联合学习和边缘协会区块链

Low-latency Federated Learning and Blockchain for Edge Association in Digital Twin empowered 6G Networks

论文作者

Lu, Yunlong, Huang, Xiaohong, Zhang, Ke, Maharjan, Sabita, Zhang, Yan

论文摘要

数字双胞胎和第六代移动网络(6G)等新兴技术已加速了工业互联网(IIOT)中边缘情报的实现。数字双胞胎和6G的集成与数字空间桥接物理系统,并实现了强大的即时无线连接。随着对数据隐私的越来越关注,联邦学习被视为在无线网络中部署分布式数据处理和学习的有前途解决方案。但是,不可靠的沟通渠道,有限的资源和用户之间缺乏信任,阻碍了联合学习在IIT中的有效应用。在本文中,我们通过将数字双胞胎纳入无线网络,将实时数据处理和计算迁移到边缘平面来介绍数字双线无线网络(DTWN)。然后,我们建议在DTWN中运行的一个区块链授权联合学习框架进行协作计算,以提高系统的可靠性和安全性,并增强数据隐私。此外,为了平衡所提出计划的学习准确性和时间成本,我们通过共同考虑数字双胞胎关联,培训数据批量和带宽分配来为边缘关联制定优化问题。我们利用多代理强化学习来找到解决该问题的最佳解决方案。现实世界数据集的数值结果表明,与基准学习方法相比,所提出的方案的效率提高了,成本降低。

Emerging technologies such as digital twins and 6th Generation mobile networks (6G) have accelerated the realization of edge intelligence in Industrial Internet of Things (IIoT). The integration of digital twin and 6G bridges the physical system with digital space and enables robust instant wireless connectivity. With increasing concerns on data privacy, federated learning has been regarded as a promising solution for deploying distributed data processing and learning in wireless networks. However, unreliable communication channels, limited resources, and lack of trust among users, hinder the effective application of federated learning in IIoT. In this paper, we introduce the Digital Twin Wireless Networks (DTWN) by incorporating digital twins into wireless networks, to migrate real-time data processing and computation to the edge plane. Then, we propose a blockchain empowered federated learning framework running in the DTWN for collaborative computing, which improves the reliability and security of the system, and enhances data privacy. Moreover, to balance the learning accuracy and time cost of the proposed scheme, we formulate an optimization problem for edge association by jointly considering digital twin association, training data batch size, and bandwidth allocation. We exploit multi-agent reinforcement learning to find an optimal solution to the problem. Numerical results on real-world dataset show that the proposed scheme yields improved efficiency and reduced cost compared to benchmark learning method.

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