Cogging Force Identification Based on Self-Adaptive Hybrid Self-Learning TLBO Trained RBF Neural Networks for Linear Motors
ID:77 Submission ID:77 View Protection:PUBLIC Updated Time:2021-06-19 18:30:31 Hits:407 Poster Presentation

Start Time:2021-07-02 14:38 (Asia/Shanghai)

Duration:1min

Session:[SP] Poster Session » [P1] Poster Session 1 & 2

Abstract
The cogging force arising due to the strong attraction forces between the iron core and the permanent magnets, is a common inherent property of the linear motors, which significantly affects the control performance. Therefore, significant research efforts have been devoted to the compensation of the cogging force. In this paper, an identification approach based on the radial basis function neural network (RBFNN) is proposed to obtain an accurate model of the cogging force. A self-adaptive hybrid self-learning teaching-learning-based optimization (SHSLTLBO) method is utilized to train the neural network. Finally, the experimental results confirm the effectiveness and the superiority of the proposed cogging force identification method.
Keywords
Cogging force, identification, meta-heuristic optimization techniques, RBF neural network
Speaker
Chenyang Ding
Fudan University

Submission Author
Chenyang Ding Fudan University
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