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Privacy protection method of power metering data in clustering based on differential privacy

机译:基于差分隐私的聚类中功率计量数据的隐私保护方法

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Power companies can use the power grid big data platform to cluster analysis of power metering data, which can improve the personalized service quality of power grid companies for different users and discover the power stealing behavior of users to protect the interests of power grid companies. However, in the cluster analysis of power measurement data, the privacy information of power users may also be disclosed. To defend the privacy information of power users, the article applies differential privacy technology to cluster analysis of power metering data to avoid power users’ privacy leakage. First, the article presents the attack model that exists in the cluster analysis of power metering data. Then, the article add Laplacian noise to the power metering data to defend against attacks in the cluster analysis of attackers. Next, to enhance the data availability of noise-added power measurement data in cluster analysis, the article limits noise distance based on the results of the cluster analysis. Experiments show that method proposed in article can guarantee the privacy information of power data during the cluster analysis of power metering data, and ensure the data quality of the power metering data after privacy protection.
机译:电力公司可以使用电网大数据平台来集群分析功率计量数据,这可以提高电网公司的个性化服务质量,为不同的用户发现电力窃取行为,以保护电网公司的利益。然而,在功率测量数据的集群分析中,也可以公开功率用户的隐私信息。为了捍卫权力用户的隐私信息,文章将差异隐私技术应用于电力计量数据的聚类分析,以避免权力用户的隐私泄漏。首先,文章介绍了在功率计量数据的集群分析中存在的攻击模型。然后,文章为电力计量数据添加了拉普拉斯噪声,以防止攻击者集群分析中的攻击。接下来,为了增强集群分析中的收集功率测量数据的数据可用性,文章基于集群分析的结果限制噪声距离。实验表明,文章中提出的方法可以保证在电力计量数据的集群分析期间的电力数据的隐私信息,并确保在隐私保护之后的功率计量数据的数据质量。

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