Robotic-Arm-Based Force Control by Deep Deterministic Policy Gradient in Neurosurgical Practice
Ibai Inziarte-Hidalgo,
Erik Gorospe,
Ekaitz Zulueta
et al.
Abstract:This research continues the previous work “Robotic-Arm-Based Force Control in Neurosurgical Practice”. In that study, authors acquired an optimal control arm speed shape for neurological surgery which minimized a cost function that uses an adaptive scheme to determine the brain tissue force. At the end, the authors proposed the use of reinforcement learning, more specifically Deep Deterministic Policy Gradient (DDPG), to create an agent that could obtain the optimal solution through self-training. In this arti… Show more
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