Experimental Assessment of Deep Reinforcement Learning for Robot Obstacle Avoidance: A LPV Control Perspective
Contributo in Atti di convegno
Data di Pubblicazione:
2021
Abstract:
This work presents the experimental assessment of a hybrid control scheme based on Deep Reinforcement. Learning (DRL) for obstacle avoidance in robot manipulators. More precisely, relying on an equivalent Linear Parameter Varying (LPV) state-space representation of the system, two operative modes, one based on both joint positions and velocities, one only based on velocity inputs, are activated depending on the measurement of the distance between the robot and the obstacle. Therefore, when the obstacle is close to the robot, a switching mechanism is introduced to enable the DRL algorithm instead of the basic motion planner, thus giving rise to a self-configuring architecture to cope with objects randomly moving in the workspace. The experimental tests of the DRL based collision avoidance hybrid strategy are carried out 011 a physical EPSON VT6 robot manipulator with satisfactory results.
Tipologia CRIS:
4.1 Contributo in Atti di convegno
Keywords:
Collision avoidance; Deep reinforcement learning; Lpv; Robot control
Elenco autori:
Incremona, G. P.; Sacchi, N.; Sangiovanni, B.; Ferrara, A.
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Titolo del libro:
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