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Privacy-Preserving Hierarchical State Estimation in Untrustworthy Cloud Environments

Jingyu Wang, Dongyuan Shi, Jinfu Chen, Chen‐Ching Liu

2020IEEE Transactions on Smart Grid13 citationsDOI

Abstract

Hierarchical state estimation (HSE) is often deployed to evaluate the states of an interconnected power system from telemetered measurements. By HSE, each low-level control center (LCC) takes charge of the estimation of its internal states, whereas a trusted high-level control center (HCC) assumes the coordination of boundary states. However, a trusted HCC may not always exist in practice; a cloud server can take the role of an HCC in case no such facility is available. Since it is prohibited to release sensitive power grid data to untrustworthy cloud environments, considerations need to be given to avoid breaches of LCCs' privacy when outsourcing the coordination tasks to the cloud server. To this end, this article proposes a privacy-preserving HSE framework, which rearranges the regular HSE procedure to integrate a degree-2 variant of the Thresholded Paillier Cryptosystem (D2TPC). Attributed to D2TPC, computations by the cloud-based HCC can be conducted entirely in the ciphertext space. Even if the HCC and some LCCs conspire together to share the information they have, the privacy of non-conspiring LCCs is still assured. Experiments on various scales of test systems demonstrate a high level of accuracy, efficiency, and scalability of the proposed framework.

Topics & Concepts

Cloud computingComputer scienceScalabilityPaillier cryptosystemOutsourcingComputer securityCryptosystemServerEncryptionComputer networkDatabaseBusinessOperating systemMarketingHybrid cryptosystemSmart Grid Security and ResilienceCryptography and Data SecurityInternet Traffic Analysis and Secure E-voting
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