A Trustworthy AIoT-Enabled Localization System via Federated Learning and Blockchain

Junfei Wang;He Huang;Jingze Feng;Steven Wong;Lihua Xie;Jianfei Yang
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引用次数: 0

Abstract

There is a significant demand for indoor localization technology in smart buildings, and the most promising solution in this field is using radio frequency (RF) sensors and fingerprinting-based methods that employ machine learning models trained on crowd-sourced user data gathered from Internet of Things (IoT) devices. However, this raises security and privacy issues in practice. Some researchers propose to use federated learning (FL) to partially overcome privacy problems, but there still remain security concerns, e.g., single-point failure and malicious attacks. In this article, we propose a framework named DFLoc to achieve precise 3-D localization tasks while considering the following two security concerns. Particularly, we design a specialized blockchain to decentralize the framework by distributing the tasks such as model distribution and aggregation, which are handled by a central server to all clients in most previous works, to tackle the single-point failure issue in ensuring reliable and accurate indoor localization. Moreover, we introduce an updated model verification mechanism within the blockchain to alleviate the concern of malicious node attacks. Experimental results substantiate the framework's capacity to deliver accurate 3-D location predictions and its superior resistance to the impacts of single-point failure and malicious attacks when compared to conventional centralized FL systems.
基于联邦学习和区块链的可信赖aiiot定位系统
智能建筑对室内定位技术有很大的需求,该领域最有前途的解决方案是使用射频(RF)传感器和基于指纹的方法,这些方法采用从物联网(IoT)设备收集的众包用户数据训练的机器学习模型。然而,这在实践中引发了安全和隐私问题。一些研究人员提出使用联邦学习(FL)来部分克服隐私问题,但仍然存在安全问题,例如单点故障和恶意攻击。在本文中,我们提出了一个名为DFLoc的框架来实现精确的3-D定位任务,同时考虑到以下两个安全问题。特别地,我们设计了一个专门的区块链,通过将模型分发和聚合等任务分散到所有客户端,解决了在确保可靠和准确的室内定位时的单点故障问题,而这些任务在以前的工作中大多由中央服务器处理。此外,我们在区块链中引入了更新的模型验证机制,以减轻对恶意节点攻击的担忧。实验结果证实,与传统的集中式FL系统相比,该框架具有提供准确的3d位置预测的能力,以及对单点故障和恶意攻击的卓越抵抗能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
7.70
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0.00%
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