4.7 Article

Intelligent Servo Control Strategy for Robot Joints With Incremental Bayesian Fuzzy Broad Learning System

Journal

IEEE-ASME TRANSACTIONS ON MECHATRONICS
Volume -, Issue -, Pages -

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMECH.2023.3277102

Keywords

Bayesian inference; fuzzy rules; incremental broad learning system (IBLS); intelligent servo control; Lyapunov theory

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This article proposes a servo control strategy for robot joints based on the incremental Bayesian fuzzy broad learning system (IBFBLS), which solves the problems of computational redundancy, limited prediction accuracy, and insufficient generalization capability in existing intelligent servo control strategies. The proposed control strategy has good self-learning and generalization abilities and achieves precise joint servo control through Bayesian inference. Simulation and experiments demonstrate the superiority of the proposed control strategy in terms of tracking accuracy, stability, and convergence compared to other servo control methods.
Intelligent servo control significantly reduces the need to adjust control parameters, and is, therefore, widely used in robot joint control. However, existing intelligent servo control strategies for robot joints have problems of computational redundancy, limited prediction accuracy, and insufficient generalization capability. To solve these problems, this article proposes a servo control strategy for robot joints that is based on the incremental Bayesian fuzzy broad learning system (IBFBLS). First, we construct an intelligent servo control strategy with broad learning system on the basis of fuzzy rules to achieve good self-learning and generalization abilities. Second, the learning parameters of the control strategy are optimized by Bayesian inference to achieve precise joint servo control. Finally, the convergence of the control strategy is enhanced by combining it with Lyapunov theory to constrain the learning parameters of the proposed control strategy. The feasibility and superiority of the proposed control strategy are verified by simulation to compare it with existing intelligent servo con-trol methods. In addition, experiments are conducted using robot joint test bed. Both the simulation and experiments verify that the proposed servo control strategy outperforms other servo control methods with respect to tracking ac-curacy, stability, and convergence. The root-mean-square error in servo control of robot joints was 0.012%, which has been reduced by 55.56% compared with the current state of the art.

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