Achieving Differential Privacy against Non-Intrusive Load Monitoring in Smart Grid: a Fog Computing approach
Fog computing, a non-trivial extension of cloud computing to the edge of the network, has great advantage in providing services with a lower latency. In smart grid, the application of fog computing can greatly facilitate the collection of consumer's fine-grained energy consumption data, which c...
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Zusammenfassung: | Fog computing, a non-trivial extension of cloud computing to the edge of the
network, has great advantage in providing services with a lower latency. In
smart grid, the application of fog computing can greatly facilitate the
collection of consumer's fine-grained energy consumption data, which can then
be used to draw the load curve and develop a plan or model for power
generation. However, such data may also reveal customer's daily activities.
Non-intrusive load monitoring (NILM) can monitor an electrical circuit that
powers a number of appliances switching on and off independently. If an
adversary analyzes the meter readings together with the data measured by an
NILM device, the customer's privacy will be disclosed. In this paper, we
propose an effective privacy-preserving scheme for electric load monitoring,
which can guarantee differential privacy of data disclosure in smart grid. In
the proposed scheme, an energy consumption behavior model based on Factorial
Hidden Markov Model (FHMM) is established. In addition, noise is added to the
behavior parameter, which is different from the traditional methods that
usually add noise to the energy consumption data. The analysis shows that the
proposed scheme can get a better trade-off between utility and privacy compared
with other popular methods. |
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DOI: | 10.48550/arxiv.1804.01817 |