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Journal ArticleDOI

Smart Meter Privacy: A Theoretical Framework

TLDR
A new framework is presented that abstracts both the privacy and the utility requirements of smart meter data and exploits the presence of high-power but less private appliance spectra as implicit distortion noise to create an optimal privacy-preserving solution.
Abstract
The solutions offered to-date for end-user privacy in smart meter measurements, a well-known challenge in the smart grid, have been tied to specific technologies such as batteries or assumptions on data usage without quantifying the loss of benefit (utility) that results from any such approach. Using tools from information theory and a hidden Markov model for the measurements, a new framework is presented that abstracts both the privacy and the utility requirements of smart meter data. This leads to a novel privacy-utility tradeoff problem with minimal assumptions that is tractable. For a stationary Gaussian model of the electricity load, it is shown that for a desired mean-square distortion (utility) measure between the measured and revealed data, the optimal privacy-preserving solution: i) exploits the presence of high-power but less private appliance spectra as implicit distortion noise, and ii) filters out frequency components with lower power relative to a distortion threshold; this approach encompasses many previously proposed approaches to smart meter privacy.

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Posted Content

Differentially Private Convex Optimization with Piecewise Affine Objectives

TL;DR: In this paper, the problem of computing a differentially private solution to convex optimization problems whose objective function is piecewise affine is studied, and several privacy preserving mechanisms are proposed.
Journal ArticleDOI

Secure data analytics for smart grid systems in a sustainable smart city: Challenges, solutions, and future directions

TL;DR: The distinctive nature of SDA and its complexity over the SG data are discussed, and a detailed taxonomy abstracted into a novel process model is presented, which highlights various research challenges such as secure data collection and preprocessing, secure load data processing and storage, load prediction, load management and analysis, data security and privacy issues, and data communication.
Journal ArticleDOI

Wavelet-Based Multiresolution Smart Meter Privacy

TL;DR: It is shown that the multiresolution approach is compatible with other privacy-enhancing technologies, such as secure signal processing, and allows adding new degrees of freedom to these methods by introducing the dimension of multiple resolutions.
Proceedings ArticleDOI

Privacy leakages in Smart Home wireless technologies

TL;DR: It is demonstrated how the websites visited by a smart device can be inferred by applying machine learning and pattern matching techniques to eavesdropped encrypted traffic.
Journal ArticleDOI

Enabling Privacy in a Distributed Game-Theoretical Scheduling System for Domestic Appliances

TL;DR: A distributed privacy-friendly DSM system that preserves users’ privacy by integrating data aggregation and perturbation techniques is proposed and results show that privacy can be improved at the cost of increasing the peak demand and the number of game iterations, whereas the total bill is only marginally incremented.
References
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Journal ArticleDOI

Nonintrusive appliance load monitoring

TL;DR: In this paper, a nonintrusive appliance load monitor that determines the energy consumption of individual appliances turning on and off in an electric load, based on detailed analysis of the current and voltage of the total load, as measured at the interface to the power source is described.
Proceedings ArticleDOI

Smart Grid Privacy via Anonymization of Smart Metering Data

TL;DR: The method described in this paper provides a 3rd party escrow mechanism for authenticated anonymous meter readings which are difficult to associate with a particular smart meter or customer.
Proceedings Article

Unsupervised disaggregation of low frequency power measurements

TL;DR: This work investigates the effectiveness of several unsupervised disaggregation methods on low frequency power measurements collected in real homes and indicates that a conditional factorial hidden semi-Markov model, which integrates additional features related to when and how appliances are used in the home and more accurately represents the power use of individual appliances, outperforms the other unsuper supervision methods.
Proceedings ArticleDOI

Secure Information Aggregation for Smart Grids Using Homomorphic Encryption

TL;DR: A distributed incremental data aggregation approach, in which data aggregation is performed at all smart meters involved in routing the data from the source meter to the collector unit, which is especially suitable for smart grids with repetitive routine data aggregation tasks.