This paper presents a robust machine learning framework for modeling and control of hydraulic actuators. We identify several important challenges concerning learning accurate models of the dynamics for real machines, including noise and uncertainty in state measurements, nonlinear effects, input delays, and data-efficiency. In particular, we propose a dual-Gaussian process (GP) model architecture to learn a surrogate dynamics model of the actuator, and showcase the accuracy of predictions against the piecewise and neural network models that have been widely used in the literature. In addition, we provide robust techniques for learning neural network inverse models and controllers by batch GP inference in an automated, seamless and computati...
Advanced feedforward control methods enable mechatronic systems to perform varying motion tasks with...
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...
This paper presents a robust machine learning framework for modeling and control of hydraulic actuat...
In this paper, we investigate on extending a feed-forward control scheme for the force control circu...
The dynamics of hydraulic systems are highly nonlinear. Aside from the nonlinear nature of hydraulic...
Modelling robot dynamics accurately is essential for control, motion optimisation and safe human-rob...
This article presents a general approach to derive an end effector trajectory tracking controller fo...
Nowadays, machine learning (ML) methods rapidly evolve for their use in model-based control applicat...
Due to the robustness and flexibility of hydraulic components, hydraulic control systems are used in...
By exploiting an a priori estimate of the dynamic model of a manipulator, it is possible to command ...
This paper aims at the characteristics of nonlinear, time-varying and parameter coupling in a hydrau...
International audienceThe aerodynamic drag of cars and trucks plays an important role for energy eff...
The main objective of this thesis is the development and implementation of a nonlinear optimal contr...
Abstract-This paper introduces a learning-based robust control algorithm that provides robust stabil...
Advanced feedforward control methods enable mechatronic systems to perform varying motion tasks with...
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...
This paper presents a robust machine learning framework for modeling and control of hydraulic actuat...
In this paper, we investigate on extending a feed-forward control scheme for the force control circu...
The dynamics of hydraulic systems are highly nonlinear. Aside from the nonlinear nature of hydraulic...
Modelling robot dynamics accurately is essential for control, motion optimisation and safe human-rob...
This article presents a general approach to derive an end effector trajectory tracking controller fo...
Nowadays, machine learning (ML) methods rapidly evolve for their use in model-based control applicat...
Due to the robustness and flexibility of hydraulic components, hydraulic control systems are used in...
By exploiting an a priori estimate of the dynamic model of a manipulator, it is possible to command ...
This paper aims at the characteristics of nonlinear, time-varying and parameter coupling in a hydrau...
International audienceThe aerodynamic drag of cars and trucks plays an important role for energy eff...
The main objective of this thesis is the development and implementation of a nonlinear optimal contr...
Abstract-This paper introduces a learning-based robust control algorithm that provides robust stabil...
Advanced feedforward control methods enable mechatronic systems to perform varying motion tasks with...
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...