Affiliation:
1. Faculty of Mechanical and Electrical Engineering, Kunming University of Science and Technology, Kunming 650500, China
2. Yunnan Key Laboratory of Intelligent Control and Application, Kunming 650500, China
Abstract
Kinematic calibration plays a pivotal role in enhancing the absolute positioning accuracy of industrial robots, with parameter identification and error compensation constituting its core components. While the conventional parameter identification method, based on linearization, has shown promise, it suffers from the loss of high-order system information. To address this issue, we propose an unscented Kalman filter (UKF) with adaptive process noise covariance for robot kinematic parameter identification. The kinematic model of a typical 6-degree-of-freedom industrial robot is established. The UKF is introduced to identify the unknown constant parameters within this model. To mitigate the reliance of the UKF on the process noise covariance, an adaptive process noise covariance strategy is proposed to adjust and correct this covariance. The effectiveness of the proposed algorithm is then demonstrated through identification and error compensation experiments for the industrial robot. Results indicate its superior stability and accuracy across various initial conditions. Compared to the conventional UKF algorithm, the proposed approach enhances the robot’s accuracy stability by 25% under differing initial conditions. Moreover, compared to alternative methods such as the extended Kalman algorithm, particle swarm optimization algorithm, and grey wolf algorithm, the proposed approach yields average improvements of 4.13%, 26.47%, and 41.59%, respectively.
Funder
National Natural Science Foundation of China
Yunnan Scientific and Technological Projects
Reference22 articles.
1. A Review of Research Progress and Key Technologies of Robotic Drilling in Aviation;Fu;CAAI Trans. Intell. Syst.,2022
2. Positioning Error Compensation of 6-Dof Robots Based on Anisotropic Error Similarity;Gao;Opt. Precis. Eng.,2022
3. Research on Online Calibration Method of Six-Axis Force Sensor for Industrial Robot;Zhang;J. Electron. Meas. Instrum.,2021
4. Research on Calibration of Absolute Positioning Accuracy of 6-Dof Cooperative Robot;Feng;Manuf. Autom.,2022
5. Robot Kinematics Calibration Method Considering Base Frame Error;Ni;China Mech. Eng.,2021