Preventive Audits for Data Applications Before Data Sharing in the Power IoT

Bohong Wang, Qinglai Guo, Yanxi Lin, Yang Yu
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Abstract

With the increase in data volume, more types of data are being used and shared, especially in the power Internet of Things (IoT). However, the processes of data sharing may lead to unexpected information leakage because of the ubiquitous relevance among the different data, thus it is necessary for data owners to conduct preventive audits for data applications before data sharing to avoid the risk of key information leakage. Considering that the same data may play completely different roles in different application scenarios, data owners should know the expected data applications of the data buyers in advance and provide modified data that are less relevant to the private information of the data owners and more relevant to the nonprivate information that the data buyers need. In this paper, data sharing in the power IoT is regarded as the background, and the mutual information of the data and their implicit information is selected as the data feature parameter to indicate the relevance between the data and their implicit information or the ability to infer the implicit information from the data. Therefore, preventive audits should be conducted based on changes in the data feature parameters before and after data sharing. The probability exchange adjustment method is proposed as the theoretical basis of preventive audits under simplified consumption, and the corresponding optimization models are constructed and extended to more practical scenarios with multivariate characteristics. Finally, case studies are used to validate the effectiveness of the proposed preventive audits.
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电力物联网数据共享前的数据应用预防性审核
随着数据量的增加,更多类型的数据被使用和共享,特别是在电力物联网(IoT)中。然而,在数据共享的过程中,由于不同数据之间无处不在的相关性,可能会导致意想不到的信息泄露,因此数据所有者有必要在数据共享前对数据应用进行预防性审计,以避免关键信息泄露的风险。考虑到不同的数据在不同的应用场景中可能发挥完全不同的作用,数据拥有者应提前了解数据购买者预期的数据应用,并提供经过修改的数据,这些数据与数据拥有者的隐私信息相关性较低,而与数据购买者所需的非隐私信息相关性较高。本文以电力物联网中的数据共享为背景,选取数据与其隐含信息的互信息作为数据特征参数,表示数据与其隐含信息的相关性或从数据中获取隐含信息的能力。因此,应根据数据共享前后数据特征参数的变化进行预防性审计。本文提出了概率交换调整方法作为简化消费下预防性审计的理论基础,并构建了相应的优化模型,并将其扩展到具有多变量特征的更实用的场景中。最后,通过案例研究验证了所提出的预防性审计的有效性。
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