Simultaneous identification, tracking control and disturbance rejection of uncertain nonlinear dynamics systems: A unified neural approach

控制理论(社会学) 人工神经网络 非线性系统 鉴定(生物学) 离散化 跟踪(教育) 趋同(经济学) 计算机科学 控制(管理) 人工智能 数学 物理 生物 经济 数学分析 心理学 量子力学 植物 经济增长 教育学
作者
Dechao Chen,Shuai Li,Qing Wu,Liefa Liao
出处
期刊:Neurocomputing [Elsevier BV]
卷期号:381: 282-297 被引量:11
标识
DOI:10.1016/j.neucom.2019.11.031
摘要

Abstract Previous works of traditional zeroing neural networks (or termed Zhang neural networks, ZNN) show great success for solving specific time-variant problems of known systems in an ideal environment. However, it is still a challenging issue for the ZNN to effectively solve time-variant problems for uncertain systems without the prior knowledge. Simultaneously, the involvement of external disturbances in the neural network model makes it even hard for time-variant problem solving due to the intensively computational burden and low accuracy. In this paper, a unified neural approach of simultaneous identification, tracking control and disturbance rejection in the framework of the ZNN is proposed to address the time-variant tracking control of uncertain nonlinear dynamics systems (UNDS). The neural network model derived by the proposed approach captures hidden relations between inputs and outputs of the UNDS. The proposed model shows outstanding tracking performance even under the influences of uncertainties and disturbances. Then, the continuous-time model is discretized via Euler forward formula (EFF). The corresponding discrete algorithm and block diagram are also presented for the convenience of implementation. Theoretical analyses on the convergence property and discretization accuracy are presented to verify the performance of the neural network model. Finally, numerical studies, robot applications, performance comparisons and tests demonstrate the effectiveness and advantages of the proposed neural network model for the time-variant tracking control of UNDS.
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