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Ahead of Print article ยท Journal article

Differentially Private Optimal Power Flow for Distribution Grids

From

Department of Electrical Engineering, Technical University of Denmark1

Center for Electric Power and Energy, Centers, Technical University of Denmark2

Energy Analytics and Markets, Center for Electric Power and Energy, Centers, Technical University of Denmark3

Georgia Institute of Technology4

Although distribution grid customers are obliged to share their consumption data with distribution system operators (DSOs), a possible leakage of this data is often disregarded in operational routines of DSOs. This paper introduces a privacy-preserving optimal power flow (OPF) mechanism for distribution grids that secures customer privacy from unauthorised access to OPF solutions, e.g., current and voltage measurements.

The mechanism is based on the framework of differential privacy that allows to control the participation risks of individuals in a dataset by applying a carefully calibrated noise to the output of a computation. Unlike existing private mechanisms, this mechanism does not apply the noise to the optimization parameters or its result.

Instead, it optimizes OPF variables as affine functions of the random noise, which weakens the correlation between the grid loads and OPF variables. To ensure feasibility of the randomized OPF solution, the mechanism makes use of chance constraints enforced on the grid limits. The mechanism is further extended to control the optimality loss induced by the random noise, as well as the variance of OPF variables.

The paper shows that the differentially private OPF solution does not leak customer loads up to specified parameters.

Language: English
Publisher: IEEE
Year: 2021
Pages: 2186-2196
ISSN: 15580679 and 08858950
Types: Ahead of Print article and Journal article
DOI: 10.1109/TPWRS.2020.3031314
ORCIDs: Dvorkin, Vladimir , 0000-0002-1381-6776 , 0000-0001-7085-9994 , 0000-0001-8377-0112 , Pinson, Pierre and Kazempour, Jalal

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