@article{2a24497c20444a03b63f9aa9b4e44529,
title = "Decentralized robust adaptive neural dynamic surface control for multi-machine excitation systems with static var compensator",
abstract = "Focusing on solving the control problem of the multimachine excitation systems with static var compensator (SVC), this paper proposes a decentralized neural adaptive dynamic surface control (DNADSC) scheme, where the radial basis function neural networks are used to approximate the unknown nonlinear dynamics of the subsystems and compensate the unknown nonlinear interactions. The main advantages of the proposed DNADSC scheme are summarized as follows: (1) the strong nonlinearities and complexities are mitigated when the SVC equipment are introduced to the multimachine excitation systems and the explosion of complexity problem of the backstepping method is overcome by combining the dynamic surface control method with neural networks (NNs) approximators; 2) the tracking error of the power angle can be kept in the prespecified performance curve by introducing the error transformed function; (3) instead of estimating the weighted vector itself, the norm of the weighted vector of the NNs are estimated, leading to the reduction of the computational burden. It is proved that all the signals in the multimachine excitation system with SVC are semiglobally uniformly ultimately bounded.",
keywords = "adaptive control, decentralized control, error transformation function, multimachine excitation systems with SVC",
author = "Xiuyu Zhang and Shuran Wang and Guoqiang Zhu and Jia Ma and Xiaoming Li and Xinkai Chen",
note = "Funding Information: This work was supported in part by the National Natural Science Foundation of China under Grant 61673101, 51606033; by the Science and Technology Project of Jilin Province under Grants 20180201009SF, 20170414011GH, 20180201004SF, 20180101069JC; by the Thirteenth Five Year Science Research Plan of Jilin Province under Grant JJKH20170105KJ; by the Jilin Technological Innovation Development Plan under Grant 201831719; and by the JSPS under Grants C-15K06152 and 14032011-000073. Funding Information: National Natural Science Foundation of China, Grant/Award Number: 61673101 and 51606033; Science and Technology Project of Jilin Province, Grant/Award Number: 20180201009SF, 20170414011GH, 20180201004SF, and 20180101069JC; Thirteenth Five Year Science Research Plan of Jilin Province, Grant/Award Number: JJKH20170105KJ; Jilin Technological Innovation Development Plan, Grant/Award Number: 201831719; JSPS, Grant/Award Number: C-15K06152 and 14032011-000073 Publisher Copyright: {\textcopyright} 2018 John Wiley & Sons, Ltd.",
year = "2019",
month = jan,
doi = "10.1002/acs.2953",
language = "English",
volume = "33",
pages = "92--113",
journal = "International Journal of Adaptive Control and Signal Processing",
issn = "0890-6327",
publisher = "John Wiley and Sons Ltd",
number = "1",
}