SYSYMar 30

Secure Filtering against Spatio-Temporal False Data Attacks under Asynchronous Sampling

arXiv:2411.1976516.32 citationsh-index: 5
AI Analysis

It addresses security vulnerabilities in large-scale control systems, such as power grids, against spatio-temporal false data attacks, representing an incremental improvement with specific domain application.

This paper tackles the problem of secure state estimation for continuous linear time-invariant systems with asynchronous sampling, where adversaries can manipulate measurements and time-stamps, by proposing a decentralized algorithm that uses local state estimates and ℓ1 regularization to achieve secure estimates with uniformly bounded error, as demonstrated on an IEEE 14-bus system.

This paper addresses the secure state estimation problem for continuous linear time-invariant systems with non-periodic and asynchronous sampled measurements, where the sensors need to transmit not only measurements but also sampling time-stamps to the fusion center. This measurement and communication setup is well-suited for operating large-scale control systems and, at the same time, introduces new vulnerabilities that can be exploited by adversaries through (i) manipulation of measurements, (ii) manipulation of time-stamps, (iii) elimination of measurements, (iv) generation of completely new false measurements, or a combination of these attacks. To mitigate these attacks, we propose a decentralized estimation algorithm in which each sensor maintains its local state estimate asynchronously based on its measurements. The local states are synchronized through time prediction and fused after time-stamp alignment. In the absence of attacks, state estimates are proven to recover the optimal Kalman estimates by solving a weighted least square problem. In the presence of attacks, solving this weighted least square problem with the aid of $\ell_1$ regularization provides secure state estimates with uniformly bounded error under an observability redundancy assumption. The effectiveness of the proposed algorithm is demonstrated using a benchmark example of the IEEE 14-bus system.

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