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Open AccessJournal ArticleDOI

Data-Driven Adaptive Optimal Control for Linear Systems With Structured Time-Varying Uncertainty

Meng Zhang, +1 more
- 01 Jan 2019 - 
- Vol. 7, pp 9215-9224
TLDR
A data-driven adaptive optimal control strategy is proposed for a class of linear systems with structured time-varying uncertainty, minimizing the upper bound of a pre-defined cost function while maintaining the closed-loop stability.
Abstract
In this paper, a data-driven adaptive optimal control strategy is proposed for a class of linear systems with structured time-varying uncertainty, minimizing the upper bound of a pre-defined cost function while maintaining the closed-loop stability. An off-policy data-driven reinforcement learning algorithm is presented, which uses repeatedly the online state signal on some fixed time intervals without knowing system information, yielding a guaranteed cost control (GCC) law with quadratic stability for the system. This law is further optimized through a particle swarm optimization (PSO) method, the parameters of which are adaptively adjusted by a fuzzy logic mechanism, and an optimal GCC law with the minimum upper bound of the cost function is finally obtained. The effectiveness of this strategy is verified on the dynamic model of a two-degree-of-freedom helicopter, showing that both stability and convergence of the closed-loop system are guaranteed and that the cost is minimized with much less iteration than the conventional PSO method with constant parameters.

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Citations
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Adaptive Guaranteed Cost of Control of Systems with Uncertain Parameters

TL;DR: The basic theoretical development of guaranteed cost control is given, and it is shown how it can be incorporated into an adaptive system.
Journal ArticleDOI

Compact Model-Free Adaptive Control Algorithm for Discrete-Time Nonlinear Systems

TL;DR: The optimal LLCs are investigated, and compact model free adaptive control (CMFAC) is introduced for a class of unknown discrete-time nonlinear systems, and the proposed CMFAC does not need to consider the values of LLCs.
Journal ArticleDOI

Introducing a Novel Model-Free Multivariable Adaptive Neural Network Controller for Square MIMO Systems

A. Mehrafrooz, +2 more
- 01 Mar 2022 - 
TL;DR: In this article , a multivariable adaptive neural network controller (MANNC) is developed for coupled model-free n-input n-output (NIN) systems, where the learning algorithm of the proposed controller does not rely on the model of a system and uses only the history of the system inputs and outputs.
Journal ArticleDOI

Autonomous Trajectory Tracking Control for a Large-Scale Unmanned Helicopter under Airflow Influence

TL;DR: A complete nonlinear dynamic unmanned helicopter model considering wind disturbance is proposed to achieve realistic simulations and teasing out the effect of wind on the control system.
Journal ArticleDOI

Optimal drug-dosing of cancer dynamics with fuzzy reinforcement learning and discontinuous reward function

TL;DR: In this article , a reinforcement learning-based optimal control is developed for the drug administration of biological phenomena in chemotherapy cancer treatment, where the treatment is considered as a class of unknown discrete-time systems when the input: drug administration and the output: tumor cells population are only utilized to design the controller.
References
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Book

Linear Optimal Control Systems

TL;DR: In this article, the authors provide an excellent introduction to feedback control system design, including a theoretical approach that captures the essential issues and can be applied to a wide range of practical problems.
Book

Optimal Control: Linear Quadratic Methods

TL;DR: In this article, an augmented edition of a respected text teaches the reader how to use linear quadratic Gaussian methods effectively for the design of control systems, with step-by-step explanations that show clearly how to make practical use of the material.
Journal ArticleDOI

Reinforcement learning and adaptive dynamic programming for feedback control

TL;DR: This work describes mathematical formulations for reinforcement learning and a practical implementation method known as adaptive dynamic programming that give insight into the design of controllers for man-made engineered systems that both learn and exhibit optimal behavior.
Journal ArticleDOI

From model-based control to data-driven control: Survey, classification and perspective

TL;DR: This paper is a brief survey on the existing problems and challenges inherent in model-based control (MBC) theory, and some important issues in the analysis and design of data-driven control (DDC) methods are here reviewed and addressed.
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