Abstract:
The proliferation of smart meters has resulted in a large amount of data being generated. It is increasingly apparent that methods are required for allowing a variety of ...Show MoreMetadata
Abstract:
The proliferation of smart meters has resulted in a large amount of data being generated. It is increasingly apparent that methods are required for allowing a variety of stakeholders to leverage the data in a manner that preserves the privacy of the consumers. The sector is scrambling to define policies, such as the so called ‘15/15 rule’, to respond to the need. However, the current policies fail to adequately guarantee privacy. In this paper, we address the problem of allowing third parties to apply K -means clustering, obtaining customer labels and centroids for a set of load time series by applying the framework of differential privacy. We leverage the method to design an algorithm that generates differentially private synthetic load data consistent with the labeled data. We test our algorithm’s utility by answering summary statistics such as average daily load profiles for a 2-dimensional synthetic dataset and a real-world power load dataset.
Published in: IEEE Transactions on Smart Grid ( Volume: 13, Issue: 6, November 2022)
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- IEEE Keywords
- Index Terms
- Differential Privacy ,
- Time Series ,
- Data Privacy ,
- Real-world Datasets ,
- Means Clustering ,
- Load Power ,
- Smart Meters ,
- Daily Load ,
- White Noise ,
- Additional Mechanisms ,
- Gaussian Noise ,
- Power System ,
- Generative Adversarial Networks ,
- Accuracy Loss ,
- Smart Grid ,
- Cluster Centroids ,
- Trace Of Matrix ,
- Solar Photovoltaic ,
- Noise Spectrum ,
- Power Utility ,
- Point Labels ,
- Privacy Guarantee ,
- Distributed Energy Resources ,
- Clustering Loss ,
- Means Algorithm ,
- Noise Covariance ,
- Domain-specific Knowledge ,
- Privacy Leakage ,
- Noise Variance ,
- Threat Model
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Differential Privacy ,
- Time Series ,
- Data Privacy ,
- Real-world Datasets ,
- Means Clustering ,
- Load Power ,
- Smart Meters ,
- Daily Load ,
- White Noise ,
- Additional Mechanisms ,
- Gaussian Noise ,
- Power System ,
- Generative Adversarial Networks ,
- Accuracy Loss ,
- Smart Grid ,
- Cluster Centroids ,
- Trace Of Matrix ,
- Solar Photovoltaic ,
- Noise Spectrum ,
- Power Utility ,
- Point Labels ,
- Privacy Guarantee ,
- Distributed Energy Resources ,
- Clustering Loss ,
- Means Algorithm ,
- Noise Covariance ,
- Domain-specific Knowledge ,
- Privacy Leakage ,
- Noise Variance ,
- Threat Model
- Author Keywords