A novel algorithm for tuning controllers for nonlinear plants is presented. The algorithm iteratively minimizes a criterion of the control performance. In each iteration one experiment is performed with a reference signal slightly different from the previous reference signal. The input--output signals of the plant are used to identify a linear time-varying model of the plant which is then used to calculate an update of the controller parameters. The algorithm requires an initial feedback controller that stabilizes the closed loop for the desired reference signal and in its vicinity, and that the closed-loop outputs are similar for the previous and current reference signals. The tuning algorithm is successfully tested on a laboratory set-u...
This paper presents a Learning Feedback Linearization (LFL) based Nonlinear Auto-Regressive Moving A...
This paper proposes a novel iterative data-driven algorithm (IDDA) for the data-driven tuning of con...
The problem of estimating the unknown parameters of a nonlinear (plant) model for an unstable, limit...
A novel algorithm for tuning controllers for nonlinear plants is presented. The algorithm iterativel...
This paper presents a novel stable adaptive controller scheme for Furuta Pendulum via nonlinear auto...
By reversing paradigms that normally utilize mathematical models as the basis for nonlinear adaptive...
Adaptive tracking of nonlinear dynamic plants is presently an active area of research. The design of...
This article deals with identification and a control design of nonlinear laboratory model Amira DR 3...
Feedforward control can significantly enhance the performance of motion systems through compensation...
The robust tracking problem for a family of nonlinear uncertain plants is considered. The solution p...
Abstract: The problem of tuning the parameters of a controller operating in the presence of noise, t...
Many controller tuners are based on linear models of both the controller and process. Desired perfor...
International audienceNonlinear control algorithms of two types are presented for uncertain linear p...
Many techniques and inventions in the field of automatic control keeps going forwards, especially th...
A neural network enhanced self-tuning controller is presented, which combines the attributes of neur...
This paper presents a Learning Feedback Linearization (LFL) based Nonlinear Auto-Regressive Moving A...
This paper proposes a novel iterative data-driven algorithm (IDDA) for the data-driven tuning of con...
The problem of estimating the unknown parameters of a nonlinear (plant) model for an unstable, limit...
A novel algorithm for tuning controllers for nonlinear plants is presented. The algorithm iterativel...
This paper presents a novel stable adaptive controller scheme for Furuta Pendulum via nonlinear auto...
By reversing paradigms that normally utilize mathematical models as the basis for nonlinear adaptive...
Adaptive tracking of nonlinear dynamic plants is presently an active area of research. The design of...
This article deals with identification and a control design of nonlinear laboratory model Amira DR 3...
Feedforward control can significantly enhance the performance of motion systems through compensation...
The robust tracking problem for a family of nonlinear uncertain plants is considered. The solution p...
Abstract: The problem of tuning the parameters of a controller operating in the presence of noise, t...
Many controller tuners are based on linear models of both the controller and process. Desired perfor...
International audienceNonlinear control algorithms of two types are presented for uncertain linear p...
Many techniques and inventions in the field of automatic control keeps going forwards, especially th...
A neural network enhanced self-tuning controller is presented, which combines the attributes of neur...
This paper presents a Learning Feedback Linearization (LFL) based Nonlinear Auto-Regressive Moving A...
This paper proposes a novel iterative data-driven algorithm (IDDA) for the data-driven tuning of con...
The problem of estimating the unknown parameters of a nonlinear (plant) model for an unstable, limit...