Dynamic models of mechatronic systems are abundantly used in the context of motion control and design of complex servo applications. In practice, these systems are often plagued by unknown interactions, which make the physics-based relations of the system dynamics only partially known. This article presents a neural network augmented physics (NNAP) model as a combination of physics-inspired and neural layers. The neural layers are inserted in the model to compensate for the unmodeled interactions, without requiring direct measurements of these unknown phenomena. In contrast to traditional approaches, both the neural network and physical parameters are simultaneously optimized, solely by using state and control input measurements. The method...
In this paper, automatic motion control is investigated for one of wheeled inverted pendulum (WIP) m...
We discuss nonlinear model predictive control (NMPC) for multi-body dynamics via physics-informed ma...
In this paper the authors present two approaches for the control of an inverted pendulum on a cart. ...
Dynamic models of mechatronic systems are abundantly used in the context of motion control and desig...
Cam-follower mechanisms are key in various mechatronic applications to convert rotary to linear reci...
International audienceEffective inclusion of physics-based knowledge into deep neural network models...
Mechatronic systems are plagued by nonlinearities and contain uncertainties amongst others due to in...
Motion control and automation can benefit from models that accurately predict the behavior of mechat...
Unknown nonlinear dynamics can limit the performance of model-based feedforward control. The aim of ...
This study examines the use of neural networks for prediction of dynamical systems. After a brief in...
The success of the current wave of artificial intelligence can be partly attributed to deep neural n...
Soft robots are made of compliant materials, which increase their flexibility but also presents mode...
The improvements in tracking performance resulting from inversion-based feedforward controllers are ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This paper discusses Neural Networks as predictor for analyzing of transmission angle of slider-cran...
In this paper, automatic motion control is investigated for one of wheeled inverted pendulum (WIP) m...
We discuss nonlinear model predictive control (NMPC) for multi-body dynamics via physics-informed ma...
In this paper the authors present two approaches for the control of an inverted pendulum on a cart. ...
Dynamic models of mechatronic systems are abundantly used in the context of motion control and desig...
Cam-follower mechanisms are key in various mechatronic applications to convert rotary to linear reci...
International audienceEffective inclusion of physics-based knowledge into deep neural network models...
Mechatronic systems are plagued by nonlinearities and contain uncertainties amongst others due to in...
Motion control and automation can benefit from models that accurately predict the behavior of mechat...
Unknown nonlinear dynamics can limit the performance of model-based feedforward control. The aim of ...
This study examines the use of neural networks for prediction of dynamical systems. After a brief in...
The success of the current wave of artificial intelligence can be partly attributed to deep neural n...
Soft robots are made of compliant materials, which increase their flexibility but also presents mode...
The improvements in tracking performance resulting from inversion-based feedforward controllers are ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This paper discusses Neural Networks as predictor for analyzing of transmission angle of slider-cran...
In this paper, automatic motion control is investigated for one of wheeled inverted pendulum (WIP) m...
We discuss nonlinear model predictive control (NMPC) for multi-body dynamics via physics-informed ma...
In this paper the authors present two approaches for the control of an inverted pendulum on a cart. ...