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Robust Data-Driven Predictive Control using Reachability Analysis.
Amr Alanwar,Yvonne R. Stürz,Karl Henrik Johansson +2 more
- 25 Mar 2021
TL;DR: In this paper, a robust data-driven control scheme for unknown linear systems with a bounded process and measurement noise is presented, where the reachable regions are computed based on only noisy input-output data of a trajectory of the system.
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Abstract: We present a robust data-driven control scheme for unknown linear systems with a bounded process and measurement noise. Instead of depending on a system model as in traditional predictive control, a controller utilizing data-driven reachable regions is proposed. The data-driven reachable regions are based on a matrix zonotope recursion and are computed based on only noisy input-output data of a trajectory of the system. We assume that measurement and process noise are contained in bounded sets. While we assume knowledge of these bounds, no knowledge about the statistical properties of the noise is assumed. In the noise-free case, we prove that the presented purely data-driven control scheme results in an equivalent closed-loop behavior to a nominal model predictive control scheme. In the case of measurement and process noise, our proposed scheme guarantees robust constraint satisfaction, which is essential in safety-critical applications. Numerical experiments show the effectiveness of the proposed data-driven controller in comparison to model-based control schemes.
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Citations
Data-driven predictive control in a stochastic setting: a unified framework
TL;DR: In this paper , a unified framework for the existing regularized data-driven predictive control schemes for stochastic systems is proposed, and an efficient two-stage scheme that splits the optimization problem in two parts: fitting the initial conditions and optimizing the future performance, while guaranteeing constraint satisfaction.
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Data-Driven Robust Predictive Control for Mixed Vehicle Platoons Using Noisy Measurement
TL;DR: In this paper , a data-driven model predictive control (MPC) was proposed to predict the future trajectory of the mixed platoon within a given horizon based on noisy vehicle measurements.
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Data-Driven Reachability Analysis from Noisy Data.
Amr Alanwar,Anne Koch,Frank Allgöwer,Karl Henrik Johansson +3 more
- 15 May 2021
TL;DR: In this article, the problem of computing reachable sets directly from noisy data without a given system model is considered, and several reachability algorithms are presented, and their accuracy is shown to depend on the underlying system generating the data.
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A Behavioral Approach to Data-Driven Control With Noisy Input-Output Data
TL;DR: In this paper , the authors deal with data-driven stability analysis and feedback stabillization of linear input-output systems in autoregressive (AR) form, assuming that noisy input output data on a finite time-interval have been obtained from some unknown AR system.
The Informativity Approach: To Data-Driven Analysis and Control
Henk J. van Waarde,Jaap Eising,M. Çamlibel,Harry L. Trentelman +3 more
TL;DR: Control design problem involves finding a mathematical description of a controller to achieve desired system behavior.
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