An assembly task is in many cases just a reverse execution of the corresponding disassembly task. During the assembly, the object being assembled passes consecutively from state to state until completed, and the set of possible movements becomes more and more constrained. Based on the observation that autonomous learning of physically constrained tasks can be advantageous, we use information obtained during learning of disassembly in assembly. For autonomous learning of a disassembly policy we propose to use hierarchical reinforcement learning, where learning is decomposed into a highlevel decision-making and underlying lower-level intelligent compliant controller, which exploits the natural motion in a constrained environment. During the r...
Robots are increasingly exploited in production plants, with the need to learn and to adapt themsel...
International audienceWe aim at a robot capable to learn sequences of actions to achieve a field of ...
Literature shows that reinforcement learning (RL) and the well-known optimization algorithms derived...
An assembly task is in many cases just a reverse execution of the corresponding disassembly task. Du...
Braun M, Wrede S. Boosting Reinforcement Learning of Robotic Assembly Tasks by Constraining the Acti...
This paper presents a new method for the autonomous construction of hierarchical action and state re...
Reinforcement learning provides a means for autonomous agents to improve their action selection stra...
In this paper, a learning approach is proposed to enable robots to generate assembly plans to assist...
First results in the effort of learning about representations of objects is presented. The questions...
International audienceThis paper presents a novel interactive motion planning system for assembly/di...
The assembly industry is shifting more towards customizable products, or requiring assembly of small...
At present, safely solving complex and high-precision assembly tasks in an unstructured environment ...
Large populations of simple robots can solve complex tasks, but controlling them is still a challeng...
International audienceWe propose an active learning architecture for robots, capable of organizing i...
A neural network controller is proposed for the motion control of robot manipulators with force/torq...
Robots are increasingly exploited in production plants, with the need to learn and to adapt themsel...
International audienceWe aim at a robot capable to learn sequences of actions to achieve a field of ...
Literature shows that reinforcement learning (RL) and the well-known optimization algorithms derived...
An assembly task is in many cases just a reverse execution of the corresponding disassembly task. Du...
Braun M, Wrede S. Boosting Reinforcement Learning of Robotic Assembly Tasks by Constraining the Acti...
This paper presents a new method for the autonomous construction of hierarchical action and state re...
Reinforcement learning provides a means for autonomous agents to improve their action selection stra...
In this paper, a learning approach is proposed to enable robots to generate assembly plans to assist...
First results in the effort of learning about representations of objects is presented. The questions...
International audienceThis paper presents a novel interactive motion planning system for assembly/di...
The assembly industry is shifting more towards customizable products, or requiring assembly of small...
At present, safely solving complex and high-precision assembly tasks in an unstructured environment ...
Large populations of simple robots can solve complex tasks, but controlling them is still a challeng...
International audienceWe propose an active learning architecture for robots, capable of organizing i...
A neural network controller is proposed for the motion control of robot manipulators with force/torq...
Robots are increasingly exploited in production plants, with the need to learn and to adapt themsel...
International audienceWe aim at a robot capable to learn sequences of actions to achieve a field of ...
Literature shows that reinforcement learning (RL) and the well-known optimization algorithms derived...