The performance of a feedforward controller is primarily determined by the extent to which it can capture the relevant dynamics of a system. The aim of this paper is to develop an input-output linear parameter-varying (LPV) feedforward parameterization and a corresponding data-driven estimation method in which the dependency of the coefficients on the scheduling signal are learned by a neural network. The use of a neural network enables the parameterization to compensate a wide class of constant relative degree LPV systems. Efficient optimization of the neural-network-based controller is achieved through a Levenberg-Marquardt approach with analytic gradients and a pseudolinear approach generalizing Sanathanan-Koerner to the LPV case. The pe...
Neural networks are expressive function approimators that can be employed for state estimation in co...
Performance of model–based feedforward controllers is typically limited by the accuracy of the model...
Iterative Learning Control (ILC) enables performance improvement by learning from previous tasks. Th...
The performance of a feedforward controller is primarily determined by the extent to which it can ca...
Unknown nonlinear dynamics often limit the tracking performance of feedforward control. The aim of t...
Unknown nonlinear dynamics can limit the performance of model-based feedforward control. The aim of ...
An increasing trend in the use of neural networks in control systems is being observed. The aim of t...
Advanced feedforward control methods enable mechatronic systems to perform varying motion tasks with...
The Linear Parameter-Varying (LPV) framework provides a modeling and control design toolchain to add...
This paper presents two direct parameterizations of stable and robust linear parameter-varying state...
Nonlinear system theory ideas have led to a method for approximating the dynamics of a nonlinear sys...
Iterative linear quadratic regulator (iLQR) has gained wide popularity in addressing trajectory opti...
This paper presents a new method for implementing adaptive controllers using multilayer feedforward ...
In this paper the learning feedforward control (LFFC) scheme is considered. This type of controller ...
Tese de dout., Engenharia Electrónica, School of Electronic Engineering Science, Univ. of Wales, B...
Neural networks are expressive function approimators that can be employed for state estimation in co...
Performance of model–based feedforward controllers is typically limited by the accuracy of the model...
Iterative Learning Control (ILC) enables performance improvement by learning from previous tasks. Th...
The performance of a feedforward controller is primarily determined by the extent to which it can ca...
Unknown nonlinear dynamics often limit the tracking performance of feedforward control. The aim of t...
Unknown nonlinear dynamics can limit the performance of model-based feedforward control. The aim of ...
An increasing trend in the use of neural networks in control systems is being observed. The aim of t...
Advanced feedforward control methods enable mechatronic systems to perform varying motion tasks with...
The Linear Parameter-Varying (LPV) framework provides a modeling and control design toolchain to add...
This paper presents two direct parameterizations of stable and robust linear parameter-varying state...
Nonlinear system theory ideas have led to a method for approximating the dynamics of a nonlinear sys...
Iterative linear quadratic regulator (iLQR) has gained wide popularity in addressing trajectory opti...
This paper presents a new method for implementing adaptive controllers using multilayer feedforward ...
In this paper the learning feedforward control (LFFC) scheme is considered. This type of controller ...
Tese de dout., Engenharia Electrónica, School of Electronic Engineering Science, Univ. of Wales, B...
Neural networks are expressive function approimators that can be employed for state estimation in co...
Performance of model–based feedforward controllers is typically limited by the accuracy of the model...
Iterative Learning Control (ILC) enables performance improvement by learning from previous tasks. Th...