Industry 4.0 is taking human-robot collaboration at the center of the production environment. Collaborative robots enhance productivity and flexibility while reducing human’s fatigue and the risk of injuries, exploiting advanced control methodologies. However, there is a lack of real-time model-based controllers accounting for the complex human-robot interaction dynamics. With this aim, this paper proposes a Model-Based Reinforcement Learning (MBRL) variable impedance controller to assist human operators in collaborative tasks. More in details, an ensemble of Artificial Neural Networks (ANNs) is used to learn a human-robot interaction dynamic model, capturing uncertainties. Such a learned model is kept updated during collaborative tasks exe...
Compared with the robots, humans can learn to perform various contact tasks in unstructured environm...
One of the hallmarks of physical interaction between humans is haptic communication, i.e. an informa...
International audienceIn this paper, a robot assistive Impedance and Admittance control methodology ...
Industry 4.0 is taking human-robot collaboration at the center of the production environment. Collab...
Human-robot collaboration (HRC) is one of the hot topics in the robotics community in the last years...
Physical human-robot collaboration is increasingly required in many contexts (such as industrial and...
© 2013 IEEE. In this paper, we propose a novel strategy for human-robot impedance mapping to realize...
In this chapter, an intelligent human–robot system with adjustable robot autonomy is presented to as...
An intelligent human-robot interaction (HRI) system with adjustable robot behavior is presented. The...
In order to make the coexistence between humans and robots a reality, we must understand how they ma...
Learning variable impedance control is a powerful method to improve the performance of force control...
Robots are becoming standard collaborators not only in factories, hospitals, and offices, but also i...
Human-robot collaboration seeks to have humans and robots closely interacting in everyday situations...
This paper presents a novel enhanced human-robot interaction system based on model reference adaptiv...
Modern robotic systems are increasingly expected to interact with unstructured and unpredictable env...
Compared with the robots, humans can learn to perform various contact tasks in unstructured environm...
One of the hallmarks of physical interaction between humans is haptic communication, i.e. an informa...
International audienceIn this paper, a robot assistive Impedance and Admittance control methodology ...
Industry 4.0 is taking human-robot collaboration at the center of the production environment. Collab...
Human-robot collaboration (HRC) is one of the hot topics in the robotics community in the last years...
Physical human-robot collaboration is increasingly required in many contexts (such as industrial and...
© 2013 IEEE. In this paper, we propose a novel strategy for human-robot impedance mapping to realize...
In this chapter, an intelligent human–robot system with adjustable robot autonomy is presented to as...
An intelligent human-robot interaction (HRI) system with adjustable robot behavior is presented. The...
In order to make the coexistence between humans and robots a reality, we must understand how they ma...
Learning variable impedance control is a powerful method to improve the performance of force control...
Robots are becoming standard collaborators not only in factories, hospitals, and offices, but also i...
Human-robot collaboration seeks to have humans and robots closely interacting in everyday situations...
This paper presents a novel enhanced human-robot interaction system based on model reference adaptiv...
Modern robotic systems are increasingly expected to interact with unstructured and unpredictable env...
Compared with the robots, humans can learn to perform various contact tasks in unstructured environm...
One of the hallmarks of physical interaction between humans is haptic communication, i.e. an informa...
International audienceIn this paper, a robot assistive Impedance and Admittance control methodology ...