2023
DOI: 10.1002/oca.2995
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Near‐optimal control of a class of output‐constrained systems using recurrent neural network: A control‐barrier function approach

Abstract: This paper proposes a near‐optimal controller design for the constrained nonlinear affine systems based on a Recurrent Neural Network (RNN) and Extended State Observers (ESOs). For this purpose, after defining a finite‐horizon integral‐type performance index, the prediction over the horizon is performed using the Taylor expansion that converts the primary problem into a finite‐dimensional optimization. In comparison with other controllers of the similar structure, the proposed method is capable of dealing with… Show more

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