Just Few States are Enough: Randomized Sparse Feedback for Stability of Dynamical Systems
Zaid Hadach, Hajar El Hammouti, El Houcine Bergou, Adnane Saoud

TL;DR
This paper introduces a novel control approach where stability is maintained using only a small, randomly selected subset of state measurements, reducing measurement requirements significantly while ensuring system stability.
Contribution
It develops a theoretical framework and an LMI-based algorithm for designing sparse, randomized feedback strategies that guarantee asymptotic mean-square stability of dynamical systems.
Findings
System can achieve stability with only 0.3% of state measurements
Proposed method extends to varying sparsification probabilities
First study on stability with purely randomized state measurements
Abstract
While classical control theory assumes that the controller has access to measurements of the entire state (or output) at every time instant, this paper investigates a setting where the feedback controller can only access a randomly selected subset of the state vector at each time step. Due to the random sparsification that selects only a subset of the state components at each step, we analyze the stability of the closed-loop system in terms of Asymptotic Mean-Square Stability (AMSS), which ensures that the system state converges to zero in the mean-square sense. We consider the problem of designing both a feedback gain matrix and a measurement sparsification strategy that minimizes the number of state components required for feedback, while ensuring AMSS of the closed-loop system. Interestingly, (1) we provide conditions on the dynamics of the system under which it is possible to find a…
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Taxonomy
TopicsStability and Control of Uncertain Systems · Control Systems and Identification · Model Reduction and Neural Networks
