Abstract

The kinematics of a robotic manipulator is critical to the real-time performance and robustness of the robot control system. This paper proposes a surrogate model of inverse kinematics for the serial six-degree of freedom (6-DOF) robotic manipulator, based on its kinematics symmetry. Herein, the inverse kinematics model is derived via the training of the Vector-Quantified Temporal Associative Memory (VQTAM) network, which originates from Self-Organized Mapping (SOM). During the processes of training, testing, and estimating of this neural network, a priority K-means tree search algorithm is utilized, thus improving the training efficacy. Furthermore, Local Linear Regression (LLR), Local Weighted Linear Regression (LWR), and Local Linear Embedding (LLE) algorithms are, respectively, combined with VQTAM to obtain three improvement algorithms, all of which aim to further optimize the prediction accuracy of the networks for subsequent comparison and selection. To speed up the solving of the least squared equation, which is common among the three algorithms, Singular Value Decomposition (SVD) is introduced. Finally, data from forward kinematics, in the form of the exponential product of a motion screw, are obtained, and are used for the construction and validation of the VQTAM neural network. Our results show that the prediction effect of the LLE algorithm is better than others, and that the LLE algorithm is a potential surrogate model to estimate the output of inverse kinematics.

Highlights

  • The robotic manipulator has been commonly used in various fields

  • To speed up the solving of the least squared equation, which is common among the three algorithms, Singular Value Decomposition (SVD) is introduced

  • Our results show that the prediction effect of the Local Linear Embedding (LLE) algorithm is better than others, and that the LLE algorithm is a potential surrogate model to estimate the output of inverse kinematics

Read more

Summary

Introduction

The robotic manipulator has been commonly used in various fields. Robot control is critical for high-speed and high-precision robot motion, and it is based on the kinematics of robots. Kinematics includes two aspects: forward kinematics and inverse kinematics. Inverse kinematics describes the mapping from the state of effector to the state of actuator [1]. The key to kinematics is establishing the mapping relationship of the manipulator. The input is the rotation angle of each joint, and the output is the pose of the end effector

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call