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Inverse kinematics solution for trajectory tracking using artificial neural networks for SCORBOT ER-4u

Rahul Kumar, Praneel Chand

Year
2015
Citations
24

Abstract

This paper presents the kinematic analysis of the SCORBOT-ER 4u robot arm using a Multi-Layered Feed-Forward (MLFF) Neural Network. The SCORBOT-ER 4u is a 5-DOF vertical articulated educational robot with revolute joints. The Denavit-Hartenberg and Geometrical methods are the forward kinematic algorithms used to generate data and train the neural network. The learning of forward-inverse mapping enables the inverse kinematic solution to be found. The algorithm is tested on hardware (SCORBOT-ER 4u) and reliable results are obtained. The modeling and simulations are done using MATLAB 8.0 software.

Keywords

Revolute jointInverse kinematicsKinematicsArtificial neural networkForward kinematicsMATLABComputer scienceTrajectoryRobot kinematicsInverse

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