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MANIPULATION

Trajectory Planning of Robotic Manipulator in Dynamic Environment Exploiting DRL

Osama Ahmad, Zawar Hussain, Hammad Naeem

Year
2024
Citations
2
Access
Open access

Abstract

This study is about the implementation of a reinforcement learning algorithm in the trajectory planning of manipulators. We have a 7-DOF robotic arm to pick and place the randomly placed block at a random target point in an unknown environment. The obstacle is randomly moving which creates a hurdle in picking the object. The objective of the robot is to avoid the obstacle and pick the block with constraints to a fixed timestamp. In this literature, we have applied a deep deterministic policy gradient (DDPG) algorithm and compared the model's efficiency with dense and sparse rewards.

Keywords

Manipulator (device)Robot manipulatorTrajectoryComputer scienceMobile manipulatorControl engineeringControl theory (sociology)RobotArtificial intelligenceEngineering

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