2023
DOI: 10.3390/app13137867
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A Research on Manipulator-Path Tracking Based on Deep Reinforcement Learning

Abstract: The continuous path of a manipulator is often discretized into a series of independent action poses during path tracking, and the inverse kinematic solution of the manipulator’s poses is computationally challenging and yields inconsistent results. This research suggests a manipulator-route-tracking method employing deep-reinforcement-learning techniques to deal with this problem. The method of this paper takes an end-to-end-learning approach for closed-loop control and eliminates the process of obtaining the i… Show more

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