Abstract: Inspired by learning feed–forward control structures, this paper considers the adaptation of the parameters of a model–reference based learning feed–forward controller that realizes an inverse model of the process. The actual process response is determined by a setpoint generator. For linear systems it can be proved that the controlled system is asymptotically stable in the sense of Liapunov. Compared with more standard model reference configurations this system has a superior performance. It is fast, robust and relatively insensitive for noisy measurements. Simulations with an arbitrary second–order process and with a model of a typical fourth–order mechatronics process demonstrate this
The increasing importance of machine learning in manipulator control is reviewed from two main persp...
. In this paper, learning control schemes for robot manipulators are tested and compared. The contro...
Learning control enables performance improvement of mechatronic systems that operate in a repetitive...
Inspired by learning feed–forward control structures, this paper considers the adaptation of the par...
Advanced feedforward control methods enable mechatronic systems to perform varying motion tasks with...
For mechatronic motion systems, the performance increases significantly if, besides feedback control...
For motion control, learning feedforward controllers (LFFCs) should be applied when accurate process...
In this paper the Learning Feed Forward Control (LFFC) scheme is considered. This type of controller...
Learning control enables performance improvement of mechatronic systems that operate in a repetitive...
Learning control enables substantial performance improvement in control applications. For instance i...
A large class of motor control tasks requires that on each cycle the con-troller is told its current...
A new control design technique, model reference robust control (MRRC), is introduced for a class of ...
The aim of this research is to develop advanced controllers for electromechanical motion systems. In...
Learning from data of past tasks can substantially improve the accuracy of mechatronic systems. Ofte...
A model, predictor, or error estimator is often used by a feedback controller to control a plant. Cr...
The increasing importance of machine learning in manipulator control is reviewed from two main persp...
. In this paper, learning control schemes for robot manipulators are tested and compared. The contro...
Learning control enables performance improvement of mechatronic systems that operate in a repetitive...
Inspired by learning feed–forward control structures, this paper considers the adaptation of the par...
Advanced feedforward control methods enable mechatronic systems to perform varying motion tasks with...
For mechatronic motion systems, the performance increases significantly if, besides feedback control...
For motion control, learning feedforward controllers (LFFCs) should be applied when accurate process...
In this paper the Learning Feed Forward Control (LFFC) scheme is considered. This type of controller...
Learning control enables performance improvement of mechatronic systems that operate in a repetitive...
Learning control enables substantial performance improvement in control applications. For instance i...
A large class of motor control tasks requires that on each cycle the con-troller is told its current...
A new control design technique, model reference robust control (MRRC), is introduced for a class of ...
The aim of this research is to develop advanced controllers for electromechanical motion systems. In...
Learning from data of past tasks can substantially improve the accuracy of mechatronic systems. Ofte...
A model, predictor, or error estimator is often used by a feedback controller to control a plant. Cr...
The increasing importance of machine learning in manipulator control is reviewed from two main persp...
. In this paper, learning control schemes for robot manipulators are tested and compared. The contro...
Learning control enables performance improvement of mechatronic systems that operate in a repetitive...