Differential privacy in edge computing-based smart city Applications:Security issues, solutions and future directions

IF 2.3 Q2 COMPUTER SCIENCE, THEORY & METHODS Array Pub Date : 2023-09-01 DOI:10.1016/j.array.2023.100293
Aiting Yao , Gang Li , Xuejun Li , Frank Jiang , Jia Xu , Xiao Liu
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引用次数: 2

Abstract

Fast-growing smart city applications, such as smart delivery, smart community, and smart health, are generating big data that are widely distributed on the internet. IoT (Internet of Things) systems are at the centre of smart city applications, as traditional cloud computing is insufficient for satisfying the critical requirements of smart IoT systems. Due to the nature of smart city applications, massive IoT data may contain sensitive information; hence, various privacy-preserving methods, such as anonymity, federated learning, and homomorphic encryption, have been utilised over the years. Furthermore, limited concern has been given to the resource consumption for data privacy-preserving in edge computing environments, which are resource-constrained when compared with cloud data centres. In particular, differential privacy (DP) has been an effective privacy-preserving method in the edge computing environment. However, there is no dedicated study on DP technology with a focus on smart city applications in the edge computing environment.

To fill this gap, this paper provides a comprehensive study on DP in edge computing-based smart city applications, covering various aspects, such as privacy models, research methods, mechanisms, and applications. Our study focuses on five areas of data privacy, including data transmitting privacy, data processing privacy, data model training privacy, data publishing privacy, and location privacy. In addition, we investigate many potential applications of DP in smart city application scenarios. Finally, future directions of DP in edge computing are envisaged. We hope this study can be a useful roadmap for researchers and practitioners in edge computing enable smart city applications.

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基于边缘计算的智慧城市应用中的差异隐私:安全问题、解决方案和未来方向
智慧交付、智慧社区、智慧健康等智慧城市应用快速发展,产生的大数据在互联网上广泛分布。物联网系统是智慧城市应用的核心,传统的云计算不足以满足智能物联网系统的关键需求。由于智慧城市应用的性质,海量物联网数据可能包含敏感信息;因此,多年来使用了各种隐私保护方法,例如匿名、联邦学习和同态加密。此外,对边缘计算环境中保护数据隐私的资源消耗的关注有限,与云数据中心相比,边缘计算环境资源受限。差分隐私(DP)是边缘计算环境下一种有效的隐私保护方法。然而,目前还没有专门针对边缘计算环境下智慧城市应用的DP技术的研究。为了填补这一空白,本文对基于边缘计算的智慧城市应用中的数据保护进行了全面的研究,涵盖了隐私模型、研究方法、机制和应用等各个方面。我们的研究重点关注数据隐私的五个方面,包括数据传输隐私、数据处理隐私、数据模型训练隐私、数据发布隐私和位置隐私。此外,我们还研究了DP在智慧城市应用场景中的许多潜在应用。最后,展望了DP在边缘计算中的未来发展方向。我们希望这项研究可以为边缘计算实现智慧城市应用的研究人员和实践者提供有用的路线图。
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来源期刊
Array
Array Computer Science-General Computer Science
CiteScore
4.40
自引率
0.00%
发文量
93
审稿时长
45 days
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