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Direct Data Driven Control Using Noisy Measurements

Main:9 Pages
8 Figures
Bibliography:1 Pages
2 Tables
Appendix:1 Pages
Abstract

This paper presents a novel direct data-driven control framework for solving the linear quadratic regulator (LQR) under disturbances and noisy state measurements. The system dynamics are assumed unknown, and the LQR solution is learned using only a single trajectory of noisy input-output data while bypassing system identification. Our approach guarantees mean-square stability (MSS) and optimal performance by leveraging convex optimization techniques that incorporate noise statistics directly into the controller synthesis. First, we establish a theoretical result showing that the MSS of an uncertain data-driven system implies the MSS of the true closed-loop system. Building on this, we develop a robust stability condition using linear matrix inequalities (LMIs) that yields a stabilizing controller gain from noisy measurements. Finally, we formulate a data-driven LQR problem as a semidefinite program (SDP) that computes an optimal gain, minimizing the steady-state covariance. Extensive simulations on benchmark systems -- including a rotary inverted pendulum and an active suspension system -- demonstrate the superior robustness and accuracy of our method compared to existing data-driven LQR approaches. The proposed framework offers a practical and theoretically grounded solution for controller design in noise-corrupted environments where system identification is infeasible.

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@article{esmzad2025_2505.06407,
  title={ Direct Data Driven Control Using Noisy Measurements },
  author={ Ramin Esmzad and Gokul S. Sankar and Teawon Han and Hamidreza Modares },
  journal={arXiv preprint arXiv:2505.06407},
  year={ 2025 }
}
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