IFed: A novel federated learning framework for local differential privacy in Power Internet of Things

被引:44
作者
Cao, Hui [1 ]
Liu, Shubo [1 ]
Zhao, Renfang [2 ]
Xiong, Xingxing [1 ]
机构
[1] Wuhan Univ, Sch Comp Sci, Wuhan 430072, Peoples R China
[2] State Grid Corp China, North China Branch, Beijing, Peoples R China
基金
中国国家自然科学基金;
关键词
Local differential privacy; differential privacy; federated learning; IoT; Power Internet of Things;
D O I
10.1177/1550147720919698
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Nowadays, wireless sensor network technology is being increasingly popular which is applied to a wide range of Internet of Things. Especially, Power Internet of Things is an important and rapidly growing section in Internet of Thing systems, which benefited from the application of wireless sensor networks to achieve fine-grained information collection. Meanwhile, the privacy risk is gradually exposed, which is the widespread concern for electricity power consumers. Non-intrusive load monitoring, in particular, is a technique to recover state of appliances from only the energy consumption data, which enables adversary inferring the behavior privacy of residents. There can be no doubt that applying local differential privacy to achieve privacy preserving in the local setting is more trustworthy than centralized approach for electricity customers. Although it is hard to control the risk and achieve the trade-off between privacy and utility by traditional local differential privacy obfuscation mechanisms, some existing obfuscation mechanisms based on artificial intelligence, called advanced obfuscation mechanisms, can achieve it. However, the large computing resource consumption to train the machine learning model is not affordable for most Power Internet of Thing terminal. In this article, to solve this problem, IFed was proposed-a novel federated learning framework that let electric provider who normally is adequate in computing resources to help Power Internet of Thing users. First, the optimized framework was proposed in which the trade-off between local differential privacy, data utility, and resource consumption was incorporated. Concurrently, the following problem of privacy preserving on the machine learning model transport between electricity provider and customers was noted and resolved. Last, users were categorized based on different levels of privacy requirements, and stronger privacy guarantee was provided for sensitive users. The formal local differential privacy analysis and the experiments demonstrated that IFed can fulfill the privacy requirements for Power Internet of Thing users.
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页数:13
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共 43 条
  • [1] Deep Learning with Differential Privacy
    Abadi, Martin
    Chu, Andy
    Goodfellow, Ian
    McMahan, H. Brendan
    Mironov, Ilya
    Talwar, Kunal
    Zhang, Li
    [J]. CCS'16: PROCEEDINGS OF THE 2016 ACM SIGSAC CONFERENCE ON COMPUTER AND COMMUNICATIONS SECURITY, 2016, : 308 - 318
  • [2] Andres M. E., 2013, P ACM SIGSAC C COMP, P901
  • [3] [Anonymous], 2011, ENCARTES, DOI [DOI 10.1137/1.9781611972818.64, 10.1137/1.9781611972818.64]
  • [4] [Anonymous], 2018, A Survey of Machine and Deep Learning Methods for Internet of Things (IoT) Security
  • [5] Bohli JM., Communications Workshops (ICC), 2010 IEEE International Conference on, 2010, P1, DOI DOI 10.1109/ICCW.2010.5503916
  • [6] Practical Secure Aggregation for Privacy-Preserving Machine Learning
    Bonawitz, Keith
    Ivanov, Vladimir
    Kreuter, Ben
    Marcedone, Antonio
    McMahan, H. Brendan
    Patel, Sarvar
    Ramage, Daniel
    Segal, Aaron
    Seth, Karn
    [J]. CCS'17: PROCEEDINGS OF THE 2017 ACM SIGSAC CONFERENCE ON COMPUTER AND COMMUNICATIONS SECURITY, 2017, : 1175 - 1191
  • [7] Brendan MH, 2018, INT C LEARN REPR VAN
  • [8] Cao H, 2018, IEEE ACCESS, V6, P663143
  • [9] Cao H, 2018, CONCUR COMPUT PRACT, V4, P1
  • [10] Choi W, 2016, 2016 ACM IEEE 43 ANN, P14