Model-Based Event-Triggered Tracking Control of Underactuated Surface Vessels With Minimum Learning Parameters

控制理论(社会学) 欠驱动 控制器(灌溉) 计算机科学 李雅普诺夫函数 自适应控制 跟踪误差 人工神经网络 控制(管理) 人工智能 非线性系统 物理 量子力学 农学 生物
作者
Yingjie Deng,Xianku Zhang,Nam-Kyun Im,Guoqing Zhang,Qiang Zhang
出处
期刊:IEEE transactions on neural networks and learning systems [Institute of Electrical and Electronics Engineers]
卷期号:31 (10): 4001-4014 被引量:106
标识
DOI:10.1109/tnnls.2019.2951709
摘要

This article studies the model-based event-triggered control (ETC) for the tracking activity of the underactuated surface vessel (USV). Following this ideology, the continuous acquisition of states is no longer needed, and the communication traffic is reduced in the channel of sensor to controller. The control laws are fabricated in the frame of an adaptive model, which is renewed with the states of the original system whenever the triggering condition is violated. In the scheme, both internal and external uncertainties are approximated by the neural networks (NNs). To decrease the computing complexity, the minimum learning parameters (MLPs) are involved both in the adaptive model and the derived controller. The adaptive laws of only two MLPs are devised, and their updating only happens at triggering instants. Using the MLPs, an adaptive triggering condition is further derived. To avoid the "Zeno" phenomenon in small tracking errors, a dead-zone operator is designed for the triggering condition. Furthermore, we incorporate the dynamic surface control (DSC) into the controller design, such that the jumping of virtual control laws at triggering instants is smoothed and the problem of "complexity explosion" is circumvented. Through the techniques of the impulsive dynamic system and the direct Lyapunov function, the parameter setting for the DSC is derived to guarantee the semiglobal uniformly ultimate boundedness (SGUUB) of all the error signals in the closed-loop system. Finally, the effectiveness of the proposed scheme is validated through the simulation.
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