Multi-Party Dynamic State Estimation that Preserves Data and Model Privacy
Yuqing Ni, Junfeng Wu, Li Li, Ling Shi

TL;DR
This paper introduces a privacy-preserving multi-party dynamic state estimation method that uses homomorphic encryption and collaborative gain design to ensure data and model privacy while achieving stable and optimal estimation.
Contribution
It develops a novel multi-party state estimation framework that preserves data and model privacy using encryption and convex optimization techniques.
Findings
The proposed method guarantees stable state estimation with privacy preservation.
The approach achieves asymptotic MMSE optimality in multi-party scenarios.
Numerical results validate the effectiveness of the privacy-preserving estimation.
Abstract
In this paper we focus on the dynamic state estimation which harnesses a vast amount of sensing data harvested by multiple parties and recognize that in many applications, to improve collaborations between parties, the estimation procedure must be designed with the awareness of protecting participants' data and model privacy, where the latter refers to the privacy of key parameters of observation models. We develop a state estimation paradigm for the scenario where multiple parties with data and model privacy concerns are involved. Multiple parties monitor a physical dynamic process by deploying their own sensor networks and update the state estimate according to the average state estimate of all the parties calculated by a cloud server and security module. The paradigm taps additively homomorphic encryption which enables the cloud server and security module to jointly fuse parties'…
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Taxonomy
TopicsCryptography and Data Security · Distributed Sensor Networks and Detection Algorithms · Security in Wireless Sensor Networks
