In this thesis a new robustness analysis for model-based Iterative Learning Control (ILC) is presented. ILC is a method of control for systems that are required to track a reference signal in a repetitive manner. The repetitive nature of such a system allows for the use of past information such that the control system iteratively learns control signals that give high levels of tracking. ILC algorithms that learn in a monotonic fashion are desirable as it implies that tracking performance is improved at each iteration. A number of model-based ILC algorithms are known to result in a monotonically converging tracking error signal. However clear and meaningful robustness conditions for monotonic convergence in spite of model uncertainty are lac...
This thesis considers the use of optimal techniques within iterative learning control (ILC) applied ...
In this paper, we present a novel Robust Monotonic Convergence (RMC) analysis approach for finite ti...
Repetitive processes are widespread in our world. Through repetition performance can be improved. A ...
In this thesis a new robustness analysis for model-based Iterative Learning Control (ILC) is present...
This paper considers the use of matrix models and the robustness of a gradient-based iterative learn...
This paper presents an approach to deal with model uncertainty in iterative learning control (ILC). ...
This dissertation presents a series of new results of iterative learning control (ILC) that progress...
Iterative learning control (ILC) is a learning technique used to improve the performance of systems ...
This thesis examines the notion of the long term robust stability of iterative learning control (ILC...
Abstract In this thesis a set of new algorithms is introduced for Iterative Learning Control (ILC) a...
Iterative learning control (ILC) is a control strategy for repetitive tasks wherein information from...
In this thesis, novel frequency domain based analysis and design methods on Norm-Optimal Iterative L...
In this paper we examine the robustness of norm optimal ILC with quadratic cost criterion for discre...
The area if Iterative Learning Control (ILC) has great potential for applications to systems with a ...
A new modification to the steepest-descent algorithm for discrete-time iterative learning control is...
This thesis considers the use of optimal techniques within iterative learning control (ILC) applied ...
In this paper, we present a novel Robust Monotonic Convergence (RMC) analysis approach for finite ti...
Repetitive processes are widespread in our world. Through repetition performance can be improved. A ...
In this thesis a new robustness analysis for model-based Iterative Learning Control (ILC) is present...
This paper considers the use of matrix models and the robustness of a gradient-based iterative learn...
This paper presents an approach to deal with model uncertainty in iterative learning control (ILC). ...
This dissertation presents a series of new results of iterative learning control (ILC) that progress...
Iterative learning control (ILC) is a learning technique used to improve the performance of systems ...
This thesis examines the notion of the long term robust stability of iterative learning control (ILC...
Abstract In this thesis a set of new algorithms is introduced for Iterative Learning Control (ILC) a...
Iterative learning control (ILC) is a control strategy for repetitive tasks wherein information from...
In this thesis, novel frequency domain based analysis and design methods on Norm-Optimal Iterative L...
In this paper we examine the robustness of norm optimal ILC with quadratic cost criterion for discre...
The area if Iterative Learning Control (ILC) has great potential for applications to systems with a ...
A new modification to the steepest-descent algorithm for discrete-time iterative learning control is...
This thesis considers the use of optimal techniques within iterative learning control (ILC) applied ...
In this paper, we present a novel Robust Monotonic Convergence (RMC) analysis approach for finite ti...
Repetitive processes are widespread in our world. Through repetition performance can be improved. A ...