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Robust fast nonsingular terminal sliding mode control strategy for electronic throttle based on extreme learning machine
Conference paper

Robust fast nonsingular terminal sliding mode control strategy for electronic throttle based on extreme learning machine

Y. Hu, H. Wang, Z. Cao, Z. Man, M. Yu and Z. Ping
2019 Chinese Control Conference (CCC)
Chinese Control Conference (CCC) 2019 (Guangzhou, China, 27/07/2019–30/07/2019)
2019
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Abstract

This paper proposes an extreme-learning-machine-based robust fast nonsingular terminal sliding mode control (FNTSMC) strategy for an electronic throttle (ET) system. Distinguished from the conventional implementations of sliding mode control (SMC), the prior knowledge of disturbance bound is not required but estimated by the novel neural networks titled as extreme learning machine (ELM) which features in the fast learning rate and excellent generalization. The unique of the proposed control strategy lies on that both the sliding variable and system state enjoy a finite-time convergence without the information of predetermined bound of system nonlinearities and disturbances. The comparative simulations are conducted to verify the effectiveness and robustness of the proposed control strategy.

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