Feed-forward model-based control relies on models of the controlled plant, e.g., in robotics on accurate knowledge of manipulator kinematics or dynamics. However, mechanical and analytical models do not capture all aspects of a plant's intrinsic properties and there remain unmodeled dynamics due to varying parameters, unmodeled friction or soft materials. In this context, machine learning is an alternative suitable technique to extract non-linear plant models from data. However, fully data-based models suffer from inaccuracies as well and are inefficient if they include learning of well known analytical models. This paper thus argues that feed-forward control based on hybrid models comprising an analytical model and a learned error model ca...
. In this paper, learning control schemes for robot manipulators are tested and compared. The contro...
We explain a procedure for getting models of robot kinematics and dynamics that are appropriate for ...
Methods like deep reinforcement learning (DRL) have gained increasing attention when solving very ge...
Feed-forward model-based control relies on models of the controlled plant, e.g., in robotics on accu...
Feed-forward model-based control relies on models of the controlled plant, e.g., in robotics on acc...
Reinhart F, Steil JJ. Hybrid Mechanical and Data-driven Modeling Improves Inverse Kinematic Control ...
Reinhart F, Shareef Z, Steil JJ. Hybrid Analytical and Data-driven Modeling for Feed-forward Robot C...
Control of robot manipulators can be greatly improved with the use of velocity and torque feedforwar...
It is well-known that inverse dynamics models can improve tracking performance in robot control. The...
It is well-known that inverse dynamics models can improve tracking performance in robot control. The...
Models are among the most essential tools in robotics, such as kinematics and dynamics models of the...
By exploiting an a priori estimate of the dynamic model of a manipulator, it is possible to command ...
In recent years, learning models from data has become an increasingly interesting tool for robotics,...
Computed torque control allows the design of considerably more precise, energy-efficient and complia...
Model learning is a crucial aspect of robotics as it enables the use of traditional and consolidated...
. In this paper, learning control schemes for robot manipulators are tested and compared. The contro...
We explain a procedure for getting models of robot kinematics and dynamics that are appropriate for ...
Methods like deep reinforcement learning (DRL) have gained increasing attention when solving very ge...
Feed-forward model-based control relies on models of the controlled plant, e.g., in robotics on accu...
Feed-forward model-based control relies on models of the controlled plant, e.g., in robotics on acc...
Reinhart F, Steil JJ. Hybrid Mechanical and Data-driven Modeling Improves Inverse Kinematic Control ...
Reinhart F, Shareef Z, Steil JJ. Hybrid Analytical and Data-driven Modeling for Feed-forward Robot C...
Control of robot manipulators can be greatly improved with the use of velocity and torque feedforwar...
It is well-known that inverse dynamics models can improve tracking performance in robot control. The...
It is well-known that inverse dynamics models can improve tracking performance in robot control. The...
Models are among the most essential tools in robotics, such as kinematics and dynamics models of the...
By exploiting an a priori estimate of the dynamic model of a manipulator, it is possible to command ...
In recent years, learning models from data has become an increasingly interesting tool for robotics,...
Computed torque control allows the design of considerably more precise, energy-efficient and complia...
Model learning is a crucial aspect of robotics as it enables the use of traditional and consolidated...
. In this paper, learning control schemes for robot manipulators are tested and compared. The contro...
We explain a procedure for getting models of robot kinematics and dynamics that are appropriate for ...
Methods like deep reinforcement learning (DRL) have gained increasing attention when solving very ge...