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 effectivene...
This article proposes an extended state observer (ESO)-based robust adaptive dynamic sliding mode (A...
This paper investigates fast finite-time control of nonlinear dynamics using terminal sliding-mode (...
In this study, we propose a robust terminal sliding mode (TSM) control scheme for automotive electro...
A novel extreme-learning-machine-based robust control scheme for automotive electronic throttle syst...
This paper proposes a novel extreme learning machine (ELM)-based fixed time adaptive trajectory cont...
This paper proposes a novel extreme-learning-machine-based fast nonsingular terminal sliding mode (F...
In this paper, a novel fast nonsingular terminal sliding mode (FNTSM) control strategy using extreme...
In this paper, a novel extreme-learning-machine (ELM)-based robust adaptive integral terminal slidin...
In this paper, a robust adaptive integral terminal sliding mode (AITSM) control strategy for the ste...
In this article, a novel active front steering (AFS) control strategy including the upper controller...
The problem of event-triggered finite-time trajectory tracking control of perturbed Euler–Lagrange s...
The control of automobile electronic throttle (AET) systems is a challenging task owing to multiple ...
Control of quadrotor helicopters is difficult because the problem is naturally nonlinear. The proble...
Most adaptive neural control schemes are based on stochastic gradient-descent backpropagation (SGBP)...
A robust adaptive chattering-free sliding mode (ACFSM) control method for electronic throttle (ET) s...
This article proposes an extended state observer (ESO)-based robust adaptive dynamic sliding mode (A...
This paper investigates fast finite-time control of nonlinear dynamics using terminal sliding-mode (...
In this study, we propose a robust terminal sliding mode (TSM) control scheme for automotive electro...
A novel extreme-learning-machine-based robust control scheme for automotive electronic throttle syst...
This paper proposes a novel extreme learning machine (ELM)-based fixed time adaptive trajectory cont...
This paper proposes a novel extreme-learning-machine-based fast nonsingular terminal sliding mode (F...
In this paper, a novel fast nonsingular terminal sliding mode (FNTSM) control strategy using extreme...
In this paper, a novel extreme-learning-machine (ELM)-based robust adaptive integral terminal slidin...
In this paper, a robust adaptive integral terminal sliding mode (AITSM) control strategy for the ste...
In this article, a novel active front steering (AFS) control strategy including the upper controller...
The problem of event-triggered finite-time trajectory tracking control of perturbed Euler–Lagrange s...
The control of automobile electronic throttle (AET) systems is a challenging task owing to multiple ...
Control of quadrotor helicopters is difficult because the problem is naturally nonlinear. The proble...
Most adaptive neural control schemes are based on stochastic gradient-descent backpropagation (SGBP)...
A robust adaptive chattering-free sliding mode (ACFSM) control method for electronic throttle (ET) s...
This article proposes an extended state observer (ESO)-based robust adaptive dynamic sliding mode (A...
This paper investigates fast finite-time control of nonlinear dynamics using terminal sliding-mode (...
In this study, we propose a robust terminal sliding mode (TSM) control scheme for automotive electro...