Abstract

Analysis and utilization of massive meter data can help decision-makers provide reasonable decisions. Therefore, multi-functional meter data processing has received considerable attention in recent years. Nevertheless, it might compromise users’ privacy, such as releasing users’ lifestyles and habits. In this paper, we propose an efficient and privacy-preserving massive data process for smart grids. The presented protocol utilizes the Paillier homomorphic encryption and Horner’s Rule to achieve a privacy-preserving two-level random permutation method, making large-scale meter data permuted randomly and sufficiently in a privacy-preserving way. As a result, the analysis center can simultaneously implement various data processing functions (such as variance, comparing, linear regression analysis), and it does not know the source of data. The security analysis shows that our protocol can realize data confidentiality and data source anonymity. The detailed analyses demonstrate that our protocol is efficient in terms of computational and communication costs. Furthermore, it can support fault tolerance of entity failures and has flexible system scalability.

Highlights

  • Smart grids add communication networks to the traditional electrical grid infrastructure [1]

  • We describe the four entities involved in our system model in detail: User, Fog Devices (FD), Cloud Server (CS), and Analysis Center (AC)

  • It can achieve a random permutation of massive meter data in a privacy-preserving way, which thanks to properties of the Paillier homomorphic encryption and Horner’s Rule and a two-level permutation mechanism

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Summary

INTRODUCTION

Smart grids add communication networks to the traditional electrical grid infrastructure [1]. We present an efficient and privacy-preserving massive data processing (PPMDP) protocol for smart grids for this challenge. Based on our system model, we utilize homomorphic encryption to realize the random permutation of massive meter data to destroy the linking relationship between users and their meter data, ensuring our protocol PPMDP can protect data privacy. The data analysis center processes original meter data, PPMDP can achieve plenty of data processing functions, making better computational and communication efficiency. (1) To realize plenty of privacy-preserving data processing functions simultaneously, we present a privacy-preserving two-level random permutation method to adequately and securely break the links between massive meter data and their sources.

RELATED WORK
SYSTEM MODEL
THREAT MODEL
PAILLIER CRYPTOSYSTEM
HORNER’S RULE
OUR PROPOSED PROTOCOL
SYSTEM INITIALIZATION
LOCAL PERTURBING
CORRECTNESS DISCUSSION
SECURITY ANALYSIS Theorem 1
FAULT TOLERANCE
PERFORMANCE ANALYSIS
CONCLUSION
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