The construction of a backstepping-sliding mode control using a high-gain observer's neural network for torque estimation is presented in this research. The correctness of the load torque data is crucial to solving the two-mass system control issue. The article suggests a radial basis function neural network topology to handle load torque estimation. When a non-rigid drive shaft is present, the predicted value is merged with backstepping-sliding mode control to ensure speed tracking performance. The closed-stability loop is demonstrated analytically and quantitatively to prove it. Additionally, a highgain observer-based structure is used to compare the effectiveness of the proposed control. The effectiveness of the proposed control structur...
In this paper, the employment of neural networks with sliding mode control in the control of a linea...
International audienceThis paper proposes a novel disturbance-observer-based complementary sliding-m...
In this paper, position control of servomotors is addressed. A radial basis function neural network ...
The aim of this research is the speed tracking of the permanent magnet synchronous motor (PMSM) usin...
It is well known that modern control of induction motor relies on a good dynamic model of the motor....
© The Institution of Engineering and Technology 2018 The suddenly released torque that accumulated i...
This paper deals with the design of sliding mode control and neural network compensation for a senso...
This paper deals with the design of sliding mode control and neural network compensation for a senso...
Linear induction motors (LIMs) make performing a direct linear motion possible without any mechanica...
The speed and tension control problem of a web handling system is investigated in this paper. From t...
This study develops a novel vehicle stability control (VSC) scheme using adaptive neural network sli...
This study develops a novel vehicle stability control (VSC) scheme using adaptive neural network sli...
This study develops a novel vehicle stability control (VSC) scheme using adaptive neural network sli...
This paper presents a new approach for the calibration and control of spark ignition engines using a...
Abstract: This paper is concerned with the adaptive sliding-mode control of nonlinear dynamic system...
In this paper, the employment of neural networks with sliding mode control in the control of a linea...
International audienceThis paper proposes a novel disturbance-observer-based complementary sliding-m...
In this paper, position control of servomotors is addressed. A radial basis function neural network ...
The aim of this research is the speed tracking of the permanent magnet synchronous motor (PMSM) usin...
It is well known that modern control of induction motor relies on a good dynamic model of the motor....
© The Institution of Engineering and Technology 2018 The suddenly released torque that accumulated i...
This paper deals with the design of sliding mode control and neural network compensation for a senso...
This paper deals with the design of sliding mode control and neural network compensation for a senso...
Linear induction motors (LIMs) make performing a direct linear motion possible without any mechanica...
The speed and tension control problem of a web handling system is investigated in this paper. From t...
This study develops a novel vehicle stability control (VSC) scheme using adaptive neural network sli...
This study develops a novel vehicle stability control (VSC) scheme using adaptive neural network sli...
This study develops a novel vehicle stability control (VSC) scheme using adaptive neural network sli...
This paper presents a new approach for the calibration and control of spark ignition engines using a...
Abstract: This paper is concerned with the adaptive sliding-mode control of nonlinear dynamic system...
In this paper, the employment of neural networks with sliding mode control in the control of a linea...
International audienceThis paper proposes a novel disturbance-observer-based complementary sliding-m...
In this paper, position control of servomotors is addressed. A radial basis function neural network ...