1. Neural network-based non-linear adaptive controller design for a class of bilinear system
- Author
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Samuel Oludare Bamgbose, Xiangfang Li, and Lijun Qian
- Subjects
feedback ,control system synthesis ,nonlinear control systems ,adaptive control ,neurocontrollers ,bilinear systems ,stability ,conditionally stabilisable control system design ,multiple state transitions ,corresponding control gains ,nn ,optimal gain estimator ,real-time control system operation ,traditional controllers ,traditional control ,learning system integration ,adaptive controller design ,novel neural network-based nonlinear adaptive control strategy ,multiinput–multioutput state-control homogeneous bilinear system ,nonlinear system ,Computer engineering. Computer hardware ,TK7885-7895 ,Computer applications to medicine. Medical informatics ,R858-859.7 - Abstract
This study presents a novel neural network (NN)-based non-linear adaptive control strategy for the global stability of multi-input–multi-output state-control homogeneous bilinear system (BLS) at the equilibrium position. Although this class of non-linear system is neither piecewise nor feedback linearisable, conditionally stabilisable control system design can be utilised to generate multiple state transitions and corresponding control gains. The collected data was used to train a NN to obtain an optimal gain estimator. Then the optimal gain estimator was integrated into real-time control system operation to adaptively compute control gains, ensuring that the controller is continuously adjustable to changing behaviour of the system. The proposed design was shown, through an illustrative example, to overcome the stability limitations of traditional controllers for the investigated class of BLS. Furthermore, discussions about the utility of the traditional control and learning system integration, as well as stability analysis of the proposed scheme were presented.
- Published
- 2019
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