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Active Fault Identification and Robust Control for Unknown Bounded Faults via Volume-Based Costs

Published: August 16, 2025 | arXiv ID: 2508.12010v1

By: Annalena Daniels , Johannes Teutsch , Fabian Kleindienst and more

Potential Business Impact:

Finds problems in machines faster, even new ones.

This paper proposes a novel framework for active fault diagnosis and parameter estimation in linear systems operating in closed-loop, subject to unknown but bounded faults. The approach integrates set-membership identification with a cost function designed to accelerate fault identification. Informative excitation is achieved by minimizing the size of the parameter uncertainty set, which is approximated using ellipsoidal outer bounds. Combining this formulation with a scheduling parameter enables a transition back to nominal control as confidence in the model estimates increases. Unlike many existing methods, the proposed approach does not rely on predefined fault models. Instead, it only requires known bounds on parameter deviations and additive disturbances. Robust constraint satisfaction is guaranteed through a tube-based model predictive control scheme. Simulation results demonstrate that the method achieves faster fault detection and identification compared to passive strategies and adaptive ones based on persistent excitation constraints.

Country of Origin
🇩🇪 Germany

Page Count
7 pages

Category
Mathematics:
Optimization and Control