The present article looks at the problem of iterative controller tuning, where the parameters of a given controller are adapted in an iterative manner to bring the user-defined performance metric to a local minimum for some repetitive process. Specifically, we cast the controller tuning problem as a real-time optimization (RTO) problem, which allows us to exploit the available RTO theory to enforce both convergence and performance guarantees. We verify the effectiveness of the proposed methodology on an experimental torsional system and note that the results are particularly promising considering the simplicity of the method
A novel auto-tuning method for the RIDE controller algorithm is presented. The RIDE controller is ap...
Adequate tuning of control laws is essential for high positioning accuracy, large system throughput,...
Repetitive processes are widespread in our world. Through repetition performance can be improved. A ...
We investigate the general iterative controller tuning (ICT) problem, where the task is to find a se...
Optimal performance of process control requires a controller synthesis based on a perfor-mance crite...
Despite the vast amount of delivered theoretical results, regarding the topic of controller design, ...
Abstract: A novel methodology, called Iterative Regression Tuning, for simultaneous tuning of multip...
Most industrial systems have objectives to meet (e.g. economic performance, production quality), are...
This book develops a coherent theoretical approach to algorithm design for iterative learning contro...
Iterative Feedback Tuning (IFT) is a data-based method for the iterative tuning of restricted comple...
In the framework of real-time optimization, measurements are used to compensate for effects of uncer...
AbstractIn model-based real-time optimization, plant-model mismatch can be handled by applying bias-...
The idea of iterative process optimization based on collected output measurements, or "real-time opt...
The paper describes a substantial extension of Norm Optimal Iterative Learning Control (NOILC) that ...
In dynamic optimization problems, the optimal input profiles are typically obtained using models tha...
A novel auto-tuning method for the RIDE controller algorithm is presented. The RIDE controller is ap...
Adequate tuning of control laws is essential for high positioning accuracy, large system throughput,...
Repetitive processes are widespread in our world. Through repetition performance can be improved. A ...
We investigate the general iterative controller tuning (ICT) problem, where the task is to find a se...
Optimal performance of process control requires a controller synthesis based on a perfor-mance crite...
Despite the vast amount of delivered theoretical results, regarding the topic of controller design, ...
Abstract: A novel methodology, called Iterative Regression Tuning, for simultaneous tuning of multip...
Most industrial systems have objectives to meet (e.g. economic performance, production quality), are...
This book develops a coherent theoretical approach to algorithm design for iterative learning contro...
Iterative Feedback Tuning (IFT) is a data-based method for the iterative tuning of restricted comple...
In the framework of real-time optimization, measurements are used to compensate for effects of uncer...
AbstractIn model-based real-time optimization, plant-model mismatch can be handled by applying bias-...
The idea of iterative process optimization based on collected output measurements, or "real-time opt...
The paper describes a substantial extension of Norm Optimal Iterative Learning Control (NOILC) that ...
In dynamic optimization problems, the optimal input profiles are typically obtained using models tha...
A novel auto-tuning method for the RIDE controller algorithm is presented. The RIDE controller is ap...
Adequate tuning of control laws is essential for high positioning accuracy, large system throughput,...
Repetitive processes are widespread in our world. Through repetition performance can be improved. A ...