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Joint Space Control via Deep Reinforcement Learning
[article]
2021
arXiv
pre-print
The dominant way to control a robot manipulator uses hand-crafted differential equations leveraging some form of inverse kinematics / dynamics. We propose a simple, versatile joint-level controller that dispenses with differential equations entirely. A deep neural network, trained via model-free reinforcement learning, is used to map from task space to joint space. Experiments show the method capable of achieving similar error to traditional methods, while greatly simplifying the process by
arXiv:2011.06332v2
fatcat:xwsuaiggrvawjh6snni7ukpdg4