Smart robotics will be a core feature while migrating from Industry 3.0 (i.e., mass manufacturing) to Industry 4.0 (i.e., customized or social manufacturing). A key characteristic of a smart system is its ability to learn. For smart manufacturing, this means incorporating learning capabilities into the current fixed, repetitive, task-oriented industrial manipulators, thus rendering them ‘smart’. In this paper we introduce two reinforcement learning (RL) based compensation methods. The learned correction signal, which compensates for unmodeled aberrations, is added to the existing nominal input with an objective to enhance the control performance. The proposed learning algorithms are evaluated on a 6-DoF industrial robotic manipulator arm to...
Reinforcement learning (RL) is an efficient learning approach to solving control problems for a robo...
Several alternative learning control algorithms are discussed, both from an inverse dynamics and an ...
This paper presents a learning-based method that uses simulation data to learn an object manipulatio...
Smart robotics will be a core feature while migrating from Industry 3.0 (i.e., mass manufacturing) t...
For a robot manipulator, an accurate reference tracking capability is one of the most important perf...
The paper focuses on industrial interaction robotics tasks, investigating a control approach involvi...
UnrestrictedAutonomous robots have been a long standing vision of robotics, artificial intelligence,...
Electrically actuated robotic arms have been implemented to complete tasks which are repetitive, str...
Industrial robots generally exhibit poor path accuracy and thus cannot satisfy many manufacturing re...
In industrial environments robots are used for various tasks. At this moment it is not feasible for ...
This thesis presents methods for improving the accuracy and efficiency of tasks performed using diff...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Machine Learning Control is a control paradigm that applies Artificial Intelligence methods to contr...
While operational space control is of essential importance for robotics and well-understood from an ...
Learning-based approaches are suitable for the control of systems with unknown dynamics. However, le...
Reinforcement learning (RL) is an efficient learning approach to solving control problems for a robo...
Several alternative learning control algorithms are discussed, both from an inverse dynamics and an ...
This paper presents a learning-based method that uses simulation data to learn an object manipulatio...
Smart robotics will be a core feature while migrating from Industry 3.0 (i.e., mass manufacturing) t...
For a robot manipulator, an accurate reference tracking capability is one of the most important perf...
The paper focuses on industrial interaction robotics tasks, investigating a control approach involvi...
UnrestrictedAutonomous robots have been a long standing vision of robotics, artificial intelligence,...
Electrically actuated robotic arms have been implemented to complete tasks which are repetitive, str...
Industrial robots generally exhibit poor path accuracy and thus cannot satisfy many manufacturing re...
In industrial environments robots are used for various tasks. At this moment it is not feasible for ...
This thesis presents methods for improving the accuracy and efficiency of tasks performed using diff...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Machine Learning Control is a control paradigm that applies Artificial Intelligence methods to contr...
While operational space control is of essential importance for robotics and well-understood from an ...
Learning-based approaches are suitable for the control of systems with unknown dynamics. However, le...
Reinforcement learning (RL) is an efficient learning approach to solving control problems for a robo...
Several alternative learning control algorithms are discussed, both from an inverse dynamics and an ...
This paper presents a learning-based method that uses simulation data to learn an object manipulatio...