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Motion optimization based on hierarchical iterative parameter learning for complicated trajectory

Yi Guo (Ningbo Artificial Intelligence Institute of Shanghai Jiao Tong University, Ningbo, China and Department of Automation, Shanghai Jiao Tong University, Shanghai, China)
TianYi Huang (Shanghai Jiaotong University, Shanghai, China)
Haohui Huang (Guangdong University of Technology, Guangzhou, China)
Huangting Zhao (Shanghai Jiao Tong University, Shanghai, China)
Weitao Liu (Shanghai Institute of Aerospace System Engineering, Shanghai, China)

Robotic Intelligence and Automation

ISSN: 2754-6969

Article publication date: 7 June 2024

Issue publication date: 18 July 2024

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Abstract

Purpose

The purpose of this paper is to propose an accurate and practical imitation learning for robotics. The modified dynamic movement primitives (DMPs), global fitting DMPs (GLDMPs), is presented. Framework design, theoretical derivation and stability proof of GLDMPs are discussed in the paper.

Design/methodology/approach

Based on the DMPs, the hierarchical iterative parameter adaptive framework is developed as the hierarchical iteration stage of the GLDMPs to tune the designed parameters adaptively to extract richer features. Inspired by spatial transformations, the coupling analytical module which can be regarded as a reversible transformation is proposed to analyze the high-dimensional coupling information and transfer it to trajectory.

Findings

With the proposed framework and module, DMPs derive majority features of the demonstration and cope with three-dimensional rotations. Moreover, GLDMPs achieve favorable performance without specialized knowledge. The modified method has been demonstrated to be stable and convergent through inference.

Originality/value

GLDMPs have an advantage in accuracy, adaptability and practicality for it is capable of adaptively computing parameters to extract richer features and handling variations in coupling information. With demonstration and simple parameter settings, GLDMPs can exhibit excellent and stable performance, accomplish learning and generalize in other regions. The proposed framework and module in the paper are useful for imitation learning in robotics and could be intuitive for similar imitation learning methods.

Keywords

Acknowledgements

Funding: This work was supported by the National Natural Science Foundation of China under Grant 62303120.

Citation

Guo, Y., Huang, T., Huang, H., Zhao, H. and Liu, W. (2024), "Motion optimization based on hierarchical iterative parameter learning for complicated trajectory", Robotic Intelligence and Automation, Vol. 44 No. 4, pp. 594-606. https://doi.org/10.1108/RIA-11-2023-0168

Publisher

:

Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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