To solve trajectory tracking problem of switched system with sensor saturation, an iterative learning control algorithm is proposed. The method uses actual measurement error to modify the control variable of system on the premise that switched rule does not change along iteration axis, but it randomly changes along time axis. Moreover, by dealing with the saturation via diagonal matrix method, the convergence of the algorithm is strictly proved in the sense of λ-norm, and the convergence condition is derived. The algorithm can achieve complete tracking of desired trajectory in the finite time interval under the random switched rule, as iterations increase. The simulation example verifies the validity of the proposed algorithm
In this brief, a direct learning control method for a class of switched systems is proposed. The obj...
This paper presents a data-driven optimal terminal iterative learning control (TILC) approach for li...
Approximate dynamic programming is used to solve optimal tracking problems in switched systems with ...
Iterative learning control is a methodology applicable to systems which repeatedly track the same re...
Iterative learning control (ILC) is considered for both deterministic and stochastic systems with un...
Iterative learning control for a class of nonlinear system is considered, and a kind of condition is...
Abstract. In this paper, an iterative learning control method is proposed for a class of nonlinear d...
An iterative learning control method is presented based on the analysis of the constraint to achieve...
Abstract. Most available results on iterative learning control address trajectory tracking problem f...
This paper proposes a novel Iterative Learning Control (ILC) framework for spatial tracking. Spatial...
Iterative learning control is concerned with tracking a reference trajectory defined over a finite t...
We propose an iterative learning control algorithm (ILC) that is developed using a variable forgetti...
This paper presents a plant-inversion based Switched Iterative Learning Control (SILC) scheme for a ...
Abstract: In this paper we use a repetitive process setting to develop a new iterative learning cont...
In this thesis, the review of Iterative Learning Control (ILC) is first introduced, including generi...
In this brief, a direct learning control method for a class of switched systems is proposed. The obj...
This paper presents a data-driven optimal terminal iterative learning control (TILC) approach for li...
Approximate dynamic programming is used to solve optimal tracking problems in switched systems with ...
Iterative learning control is a methodology applicable to systems which repeatedly track the same re...
Iterative learning control (ILC) is considered for both deterministic and stochastic systems with un...
Iterative learning control for a class of nonlinear system is considered, and a kind of condition is...
Abstract. In this paper, an iterative learning control method is proposed for a class of nonlinear d...
An iterative learning control method is presented based on the analysis of the constraint to achieve...
Abstract. Most available results on iterative learning control address trajectory tracking problem f...
This paper proposes a novel Iterative Learning Control (ILC) framework for spatial tracking. Spatial...
Iterative learning control is concerned with tracking a reference trajectory defined over a finite t...
We propose an iterative learning control algorithm (ILC) that is developed using a variable forgetti...
This paper presents a plant-inversion based Switched Iterative Learning Control (SILC) scheme for a ...
Abstract: In this paper we use a repetitive process setting to develop a new iterative learning cont...
In this thesis, the review of Iterative Learning Control (ILC) is first introduced, including generi...
In this brief, a direct learning control method for a class of switched systems is proposed. The obj...
This paper presents a data-driven optimal terminal iterative learning control (TILC) approach for li...
Approximate dynamic programming is used to solve optimal tracking problems in switched systems with ...