Feedforward control is essential to achieving good tracking performance in positioning systems. The aim of this paper is to develop an identification strategy for inverse models of systems with nonlinear dynamics of unknown structure using input-output data, which can be used to generate feedforward signals for a-priori unknown tasks. To this end, inverse systems are regarded as noncausal nonlinear finite impulse response (NFIR) systems, and modeled as a Gaussian Process with a stationary kernel function that imposes properties such as smoothness. The approach is validated experimentally on a consumer printer with friction and shown to lead to improved tracking performance with respect to linear feedforward
This paper considers model-based feedforward for motion systems. The proposed feedforward controller...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Mechatronic systems have increasingly stringent performance requirements for motion control, leadin...
Feedforward control is essential to achieving good tracking performance in positioning systems. The ...
Feedforward control is essential to achieving good tracking performance in positioning systems. The ...
Advanced feedforward control methods enable mechatronic systems to perform varying motion tasks with...
Advanced feedforward control methods enable mechatronic systems to perform varying motion tasks with...
This paper presents a robust machine learning framework for modeling and control of hydraulic actuat...
Gaussian process prior models offer a nonparametric approach to modelling unknown nonlinear systems ...
Unknown nonlinear dynamics can limit the performance of model-based feedforward control. The aim of ...
Models of inverse systems are commonly encountered in control, e.g., feedforward. The aim of this pa...
Inversion-based feedforward control enables high performance for industrial motion systems. To this ...
This work addresses feedforward disturbance problems and trajectory tracking problems for both small...
This paper considers model-based feedforward for motion systems. The proposed feedforward controller...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Mechatronic systems have increasingly stringent performance requirements for motion control, leadin...
Feedforward control is essential to achieving good tracking performance in positioning systems. The ...
Feedforward control is essential to achieving good tracking performance in positioning systems. The ...
Advanced feedforward control methods enable mechatronic systems to perform varying motion tasks with...
Advanced feedforward control methods enable mechatronic systems to perform varying motion tasks with...
This paper presents a robust machine learning framework for modeling and control of hydraulic actuat...
Gaussian process prior models offer a nonparametric approach to modelling unknown nonlinear systems ...
Unknown nonlinear dynamics can limit the performance of model-based feedforward control. The aim of ...
Models of inverse systems are commonly encountered in control, e.g., feedforward. The aim of this pa...
Inversion-based feedforward control enables high performance for industrial motion systems. To this ...
This work addresses feedforward disturbance problems and trajectory tracking problems for both small...
This paper considers model-based feedforward for motion systems. The proposed feedforward controller...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
Mechatronic systems have increasingly stringent performance requirements for motion control, leadin...