Kim Gyungmin, Kim Yonggang
Agency for Defense Development, Daejeon 34186, Republic of Korea.
Division of Computer Science and Engineering, Kongju National University, Cheonan 31080, Republic of Korea.
Sensors (Basel). 2024 Jan 15;24(2):535. doi: 10.3390/s24020535.
Machine learning techniques have attracted considerable attention for wireless networks because of their impressive performance in complicated scenarios and usefulness in various applications. However, training with and sharing raw data obtained locally from each wireless node does not guarantee privacy and requires a large communication overhead. To mitigate such issues, federated learning (FL), in which sharing parameters for model updates are shared instead of raw data, has been developed. FL has also been studied using blockchain techniques to efficiently perform learning in distributed wireless systems without having to deploy a centralized server. Although blockchain-based decentralized federated learning (BDFL) is a promising technique for various wireless sensor networks, malicious attacks can still occur, which result in performance degradation or malfunction. In this study, we analyze the impact of a jamming threats from malicious miners to BDFL in wireless networks. In a wireless BDFL system, it is possible for malicious miners with jamming capability to interfere with the collection of model parameters by normal miners, thus preventing the victim miner from generating a global model. By disrupting normal miners participating in BDFL systems, malicious miners with jamming capability can more easily add malicious data to the mainstream. Through various simulations, we evaluated the success probability performance of malicious block insertion and the participation rate of normal miners in a wireless BDFL system.
机器学习技术因其在复杂场景中的出色表现以及在各种应用中的实用性,在无线网络中引起了广泛关注。然而,使用从每个无线节点本地获取的原始数据进行训练和共享并不能保证隐私,而且需要大量的通信开销。为了缓解这些问题,已经开发了联邦学习(FL),即共享用于模型更新的参数而不是原始数据。人们还研究了使用区块链技术的联邦学习,以便在无需部署集中式服务器的情况下,在分布式无线系统中高效地进行学习。尽管基于区块链的去中心化联邦学习(BDFL)对于各种无线传感器网络来说是一项很有前景的技术,但恶意攻击仍然可能发生,这会导致性能下降或出现故障。在本研究中,我们分析了无线网络中恶意矿工的干扰威胁对BDFL的影响。在无线BDFL系统中,具有干扰能力的恶意矿工有可能干扰正常矿工对模型参数的收集,从而阻止受害矿工生成全局模型。通过干扰参与BDFL系统的正常矿工,具有干扰能力的恶意矿工可以更轻松地将恶意数据混入主流。通过各种模拟,我们评估了无线BDFL系统中恶意块插入的成功概率性能以及正常矿工的参与率。