Home /Research /Transfer Learning-Based Artificial Neural Network for Forward Kinematic Estimation of 6-DOF Robot
LEARNING

Transfer Learning-Based Artificial Neural Network for Forward Kinematic Estimation of 6-DOF Robot

P. Kesaba, Bibhuti Bhusan Choudhury

Year
2022
Citations
3
Access
Open access

Abstract

Transfer Learning (TL) can significantly lower training time and reduce dependency on a large number of target domain datasets. Such an approach is still not exploited for robotic prediction tasks. Currently, a TL based Artificial Neural Network (ANN) is explored and validated for robotic forward kinematics estimation of a 6-DOF robot. The robotic positions are estimated from the available joint angle information. The 6-R MTAB Aristo-XT robot is selected as a case study to generate the target experimental training and testing data for validation of ML techniques. While, the PUMA 560 6-DOF robot is used as a source for prior training of the ANN model. Standard performance measures such as learning error, deviation error and Mean Square Error (MSE) are evaluated and graphical illustrations are presented for fair comparison of the results. Experimental results reveal that, instead of ANN, the TL-ANN is strongly suggested to improve the training time of ANN regressor, and it also reduces the randomness and improves the accuracy as compared to its counterpart.

Keywords

Artificial neural networkRobotComputer scienceKinematicsArtificial intelligenceRandomnessTransfer of learningMean squared errorStandard deviationDependency (UML)

Related papers

Browse all LEARNING papers