Parametrized controller for non-canonical form nonlinear systems using neural networks

Zhang Yanjun, Tao Gang, Chen Mou

科研成果: 书/报告/会议事项章节会议稿件同行评审

摘要

This paper presents a new study on parametrized controller for non-canonical form nonlinear systems using neural networks. Unlike commonly studied canonical form systems whose neural-network based approximations have explicit relative degrees and can be directly used to derive controller parameters, non-canonical form systems usually do not have such a feature, because neural-network based approximations of such systems are still in a non-canonical form. It is well-known that control of non-canonical form nonlinear systems involves reparametrization of system dynamics. As demonstrated in this paper, it is also the case for neural-network approximated non-canonical form systems. Effective control of such systems is an open research problem, especially in the presence of uncertain parameters. This paper shows that it is necessary to reparametrize such neural-network systems for control design and that such reparametrization can be realized using a relative degree formulation, a concept yet to be studied for general neural network systems. The paper then derives a parametrized controller structure for effective control of general non-canonical form neural network systems, as the baseline controller for adaptation. An illustrative example is presented with simulation results to demonstrate the control design procedure, and to verify the effectiveness of such a new control design method.

源语言英语
主期刊名Proceedings of the 34th Chinese Control Conference, CCC 2015
编辑Qianchuan Zhao, Shirong Liu
出版商IEEE Computer Society
850-855
页数6
ISBN(电子版)9789881563897
DOI
出版状态已出版 - 11 9月 2015
已对外发布
活动34th Chinese Control Conference, CCC 2015 - Hangzhou, 中国
期限: 28 7月 201530 7月 2015

出版系列

姓名Chinese Control Conference, CCC
2015-September
ISSN(印刷版)1934-1768
ISSN(电子版)2161-2927

会议

会议34th Chinese Control Conference, CCC 2015
国家/地区中国
Hangzhou
时期28/07/1530/07/15

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