Affiliation:
1. Department of Electrical and Computer Engineering, University of Kentucky, Lexington, KY 40506, USA
Abstract
As robots are increasingly used in remote, safety-critical, and hazardous applications, the reliability of robots is becoming more important than ever before. Robotic arm joint motor-drive systems are vulnerable to hardware failures due to harsh operating environment in many scenarios, which may yield various joint failures and result in significant downtime costs. Targeting the most common robotic joint brushless DC (BLDC) motor-drive systems, this paper proposes a robust online diagnostic method for semiconductor faults for BLDC motor drives. The proposed fault diagnostic technique is based on the stator current signature analysis. Specifically, this paper investigates the performance of the BLDC joint motors under open-circuit faults of the inverter switches using finite element co-simulation tools. Furthermore, the proposed methodology is not only capable of detecting any open-circuit faults but also identifying faulty switches based on a knowledge table by considering various fault conditions. The robustness of the proposed technique was verified through extensive simulations under different speed and load conditions. Moreover, simulations have been carried out on a Kinova Gen-3 robot arm to verify the theoretical findings, highlighting the impacts of locked joints on the robot’s end-effector locations. Finally, experimental results are presented to corroborate the performance of the proposed fault diagnostic strategy.
Funder
U.S. National Science Foundation
Reference28 articles.
1. Wang, W., Gao, W., Zhao, S., Cao, W., and Du, Z. (2017). Robot protection in the hazardous environments. Robots Operating in Hazardous Environments, IntechOpen.
2. Kinematic analysis and fault-tolerant trajectory planning of space manipulator under a single joint failure;Mu;Robot. Biomim.,2016
3. Trevelyan, J., Hamel, W.R., and Kang, S.-C. (2016). Robotics in hazardous applications. Springer Handbook of Robotics, Springer.
4. Phuengsuk, R., and Suthakorn, J. (2016, January 3–7). A study on risk assessment for improving reliability of rescue robots. Proceedings of the 2016 IEEE International Conference on Robotics and Biomimetics (ROBIO), Qingdao, China.
5. Jung, M.Y., Taylor, R.H., and Kazanzides, P. (June, January 31). Safety design view: A conceptual framework for systematic understanding of safety features of medical robot systems. Proceedings of the IEEE International Conference on Robotics and Automation (ICRA), Hong Kong, China.