Computers and Electrical Engineering, Volume (116), No (2024), Year (2024-5) , Pages (109179-109179)

Title : ( Combining hybrid metaheuristic algorithms and reinforcement learning to improve the optimal control of nonlinear continuous-time systems with input constraints )

Authors: Omid Solaymani Fard , Roya Khalili ,

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Abstract

This paper proposes an innovative method for achieving optimal tracking control in nonlinear continuous-time systems with input constraints. The method combines reinforcement learning and hybrid metaheuristics to enhance the controller’s performance. Specifically, a hybrid metaheuristic algorithm is employed to optimize the hyperparameters of a critic neural network, which serves as the system’s controller. The proposed approach is evaluated through extensive simulation studies on a nonlinear system with input constraints. Results demonstrate its superiority over traditional control techniques in terms of accuracy, timeliness, and stability. Notably, the approach effectively eliminates overshoot and steady-state error while providing precise and prompt tracking and showcasing remarkable robustness against model uncertainties. By synergistically integrating reinforcement learning and hybrid metaheuristics, this approach represents a significant advancement in enhancing the control performance of complex nonlinear systems. The simulation studies confirm superiority of the proposed approach over existing techniques, offering a promising solution for achieving optimal tracking control in nonlinear systems with input constraints. This approach holds potential for a wide range of applications, including robotics, aerospace, and manufacturing, where precise and prompt tracking control is critical.

Keywords

, Optimal tracking control, Reinforcement learning, Actor-critic neural network, Hybrid metaheuristic algorithms, Nonlinear systems
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@article{paperid:1098246,
author = {Solaymani Fard, Omid and Khalili, Roya},
title = {Combining hybrid metaheuristic algorithms and reinforcement learning to improve the optimal control of nonlinear continuous-time systems with input constraints},
journal = {Computers and Electrical Engineering},
year = {2024},
volume = {116},
number = {2024},
month = {May},
issn = {0045-7906},
pages = {109179--109179},
numpages = {0},
keywords = {Optimal tracking control; Reinforcement learning; Actor-critic neural network; Hybrid metaheuristic algorithms; Nonlinear systems},
}

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%0 Journal Article
%T Combining hybrid metaheuristic algorithms and reinforcement learning to improve the optimal control of nonlinear continuous-time systems with input constraints
%A Solaymani Fard, Omid
%A Khalili, Roya
%J Computers and Electrical Engineering
%@ 0045-7906
%D 2024

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