Trial-varying disturbances are a key concern in Iterative Learning Control (ILC) and may lead to inefficient and expensive implementations and severe performance deterioration. The aim of this paper is to develop a general framework for optimization-based ILC that allows for enforcing additional structure, including sparsity. The proposed method enforces sparsity in a generalized setting through convex relaxations using ℓ1 norms. The proposed ILC framework is applied to the optimization of sampling sequences for resource efficient implementation, trial-varying disturbance attenuation, and basis function selection. The framework has a large potential in control applications such as mechatronics, as is confirmed through an application on a wa...
Iterative learning control (ILC) is a control design method that can improve the tracking performanc...
Iterative Learning Control (ILC) is a control strategy to improve the performance of digital batch r...
\u3cp\u3eThe standard assumption that a measurement signal is available at each sample in iterative ...
Trial-varying disturbances are a key concern in Iterative Learning Control (ILC) and may lead to ine...
\u3cp\u3eTrial-varying disturbances are a key concern in Iterative Learning Control (ILC) and may le...
Iterative learning control enables the determination of optimal command inputs by learning from meas...
Iterative learning control enables the determination of optimal command inputs by learning from meas...
In this paper we present an approach to deal with trial-varying initial conditions in norm-optimal i...
The area if Iterative Learning Control (ILC) has great potential for applications to systems with a ...
In the past Iterative Learning Control has been shown to be a method that can easily achieve extreme...
When iterative learning control (ILC) is applied to improve a system's tracking performance, the tri...
Although iterative learning control (ILC) algorithms enable performance improvement for batch repeti...
Iterative Learning Control (ILC) can significantly enhance the performance of systems that perform r...
Iterative learning control (ILC) is a control design method that can improve the tracking performanc...
Iterative Learning Control (ILC) is a control strategy to improve the performance of digital batch r...
\u3cp\u3eThe standard assumption that a measurement signal is available at each sample in iterative ...
Trial-varying disturbances are a key concern in Iterative Learning Control (ILC) and may lead to ine...
\u3cp\u3eTrial-varying disturbances are a key concern in Iterative Learning Control (ILC) and may le...
Iterative learning control enables the determination of optimal command inputs by learning from meas...
Iterative learning control enables the determination of optimal command inputs by learning from meas...
In this paper we present an approach to deal with trial-varying initial conditions in norm-optimal i...
The area if Iterative Learning Control (ILC) has great potential for applications to systems with a ...
In the past Iterative Learning Control has been shown to be a method that can easily achieve extreme...
When iterative learning control (ILC) is applied to improve a system's tracking performance, the tri...
Although iterative learning control (ILC) algorithms enable performance improvement for batch repeti...
Iterative Learning Control (ILC) can significantly enhance the performance of systems that perform r...
Iterative learning control (ILC) is a control design method that can improve the tracking performanc...
Iterative Learning Control (ILC) is a control strategy to improve the performance of digital batch r...
\u3cp\u3eThe standard assumption that a measurement signal is available at each sample in iterative ...