Title
Privacy-preserving statistical analysis over multi-dimensional aggregated data in edge computing-based smart grid systems
Abstract
Smart grid systems enable bidirectional data communication between users and a smart grid control center (CC), by utilizing various communication infrastructures and embedded devices. To extract valuable information from users’ power consumption data efficiently, multi-dimensional data of users are required to be analyzed deeply. To protect users’ privacy, power consumption data are usually encrypted before transmission, which simultaneously makes it difficult to conduct statistical analysis. In this paper, we propose a scheme which enables privacy-preserving statistical analysis over multi-dimensional aggregated data (SA-MAD) in smart grid systems equipped with edge computing. We modify Boneh–Goh–Nissim (BGN) public key cryptosystem to a dual-message encryption mode, combining with two special superincreasing sequences to deal with multi-dimensional encrypted data aggregation. Besides, we design an identity-based aggregate signature to ensure encrypted data integrity in smart grid systems, and employ shamir secret sharing technique to support transmission fault-tolerance mechanism from smart meters to corresponding edge servers. SA-MAD enables CC to flexibly conduct privacy-preserving statistical analysis (e.g., sum, average, and variance) over aggregated data, and it could be easily extended to support covariance and linear regression computation. The performance evaluation demonstrates the feasibility of SA-MAD in edge computing-based smart grid systems.
Year
DOI
Venue
2022
10.1016/j.sysarc.2022.102508
Journal of Systems Architecture
Keywords
DocType
Volume
Smart grid systems,Multi-dimensional data aggregation,Statistical analysis,Edge computing,Fault-tolerance mechanism
Journal
127
ISSN
Citations 
PageRank 
1383-7621
0
0.34
References 
Authors
0
6
Name
Order
Citations
PageRank
Xiaojun Zhang132.07
Chao Huang210330.94
Dawu Gu3644103.50
Jingwei Zhang411.02
Jingting Xue500.34
Huaxiong Wang61701142.11