We propose a performance-based autotuning method for cascade control systems, where the parameters of a linear axis drive motion controller from two control loops are tuned jointly. Using Bayesian optimization as all parameters are tuned simultaneously, the method is guaranteed to converge asymptotically to the global optimum of the cost. The data-efficiency and performance of the method are studied numerically for several training configurations and compared numerically to those achieved with classical tuning methods and to the exhaustive evaluation of the cost. On the real system, the tracking performance and robustness against disturbances are compared experimentally to nominal tuning. The numerical study and the experimental data both d...
Cascade control configurations are one of the widely used control solutions for improving dynamic re...
Due to their complexity, modern systems expose many con-figuration parameters which users must ...
Supervised machine learning is often applied to identify system dynamics where first principle metho...
This article presents an automated, model-free, data-driven method for the safe tuning of PID cascad...
Tuning of controller parameters is a highly relevant part of the controller design of a system, bec...
Adaptive control approaches yield high-performance controllers when a precise system model or suitab...
A new automatic tuning method for cascade control systems is presented. The technique consists in es...
Process controllers are abundant in the industry and require attentive tuning to achieve optimal per...
This manuscript deals with the automatic tuning of cascade control systems, that are frequently enco...
Robotic setups often need fine-tuned controller parameters both at low- and task-levels. Finding an ...
International audienceThe purpose of this paper is to develop an automated tuning procedure for auto...
The automatic tuning problem of multiple-input-multiple-output (MIMO) controllers is considered with...
Controller tuning and parameter optimization are crucial in system design to improve both the contro...
Autonomy is increasingly demanded to industrial manipulators. Robots have to be capable to regulate ...
Accurate positioning and fast traversal times determine the productivity in machining applications. ...
Cascade control configurations are one of the widely used control solutions for improving dynamic re...
Due to their complexity, modern systems expose many con-figuration parameters which users must ...
Supervised machine learning is often applied to identify system dynamics where first principle metho...
This article presents an automated, model-free, data-driven method for the safe tuning of PID cascad...
Tuning of controller parameters is a highly relevant part of the controller design of a system, bec...
Adaptive control approaches yield high-performance controllers when a precise system model or suitab...
A new automatic tuning method for cascade control systems is presented. The technique consists in es...
Process controllers are abundant in the industry and require attentive tuning to achieve optimal per...
This manuscript deals with the automatic tuning of cascade control systems, that are frequently enco...
Robotic setups often need fine-tuned controller parameters both at low- and task-levels. Finding an ...
International audienceThe purpose of this paper is to develop an automated tuning procedure for auto...
The automatic tuning problem of multiple-input-multiple-output (MIMO) controllers is considered with...
Controller tuning and parameter optimization are crucial in system design to improve both the contro...
Autonomy is increasingly demanded to industrial manipulators. Robots have to be capable to regulate ...
Accurate positioning and fast traversal times determine the productivity in machining applications. ...
Cascade control configurations are one of the widely used control solutions for improving dynamic re...
Due to their complexity, modern systems expose many con-figuration parameters which users must ...
Supervised machine learning is often applied to identify system dynamics where first principle metho...