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Adaptive integral terminal sliding mode control of unmanned bicycle via ELM and barrier function
Journal article   Peer reviewed

Adaptive integral terminal sliding mode control of unmanned bicycle via ELM and barrier function

Long Chen, Zhihui Jin, Ke Shao, Guangyi Wang, Shuping He, Vladimir Stojanovic, Parisa A. Bahri and H. Wang
Robotica, First View
2024

Abstract

In this paper, an unmanned bicycle (UB) with a reaction wheel is designed, and a second-order mathematical model with uncertainty is established. In order to achieve excellent balancing performance of the UB system, an adaptive controller is designed, which is composed of nominal feedback control, compensating control using extreme learning machine observer and reaching control via integral terminal sliding mode (ITSM) and barrier function (BF)-based adaptive law. Owing to the features of BF-based ITSM (BFITSM), not only any uncertainty or disturbance upper bound is not needed any longer but also the finite-time convergence of the closed-loop system can be ensured with a predefined error bound. Moreover, the BF-based control gain can be adaptively adjusted according to the update of the lumped uncertainty such that the overestimation is removed. The stability analysis of the closed-loop system is given according to Lyapunov theory. Comparable experimental results on an actual UB are carried out to validate the superior balancing performance of the proposed controller.

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Collaboration types
Domestic collaboration
International collaboration
Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.29 Automation & Control Systems
4.29.104 Adaptive Control
Web Of Science research areas
Robotics
ESI research areas
Engineering
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