On stability for learning human control strategy by demonstrations using SVM
ISSN: 0144-5154
Article publication date: 2 December 2019
Issue publication date: 18 February 2020
Abstract
Purpose
This paper aims to deal with the trade-off of the stability and the accuracy in learning human control strategy from demonstrations. With the stability conditions and the estimated stability region, this paper aims to conveniently get rid of the unstable controller or controller with relatively small stability region. With this evaluation, the learning human strategy controller becomes much more robust to perturbations.
Design/methodology/approach
In this paper, the criterion to verify the stability and a method to estimate the domain of attraction are provided for the learning controllers trained with support vector machines (SVMs). Conditions are formulated based on the discrete-time system Lyapunov theory to ensure that a closed-form of the learning control system is strongly stable under perturbations (SSUP). Then a Chebychev point based approach is proposed to estimate its domain of attraction.
Findings
Some of such learning controllers have been implemented in the vertical balance control of a dynamically stable, statically unstable wheel mobile robot.
Keywords
Acknowledgements
Funding: National Natural Science Foundation of China (Grants No. U1613210).
Science and Technology Planning Project of Guangdong Province (2019B090915002).
Shenzhen Hong Kong Innovation Circle Research Program (SGLH20161212141256837).
Shenzhen Fundamental Research Programs (JCYJ20170413165528221, JCYJ2016428154842603).
Citation
Wang, Z. and Ou, Y. (2020), "On stability for learning human control strategy by demonstrations using SVM", Assembly Automation, Vol. 40 No. 1, pp. 118-131. https://doi.org/10.1108/AA-11-2018-0236
Publisher
:Emerald Publishing Limited
Copyright © 2019, Emerald Publishing Limited