Adaptive Neural Control of Underactuated Surface Vessels With Prescribed Performance Guarantees

控制理论(社会学) 反推 欠驱动 稳健性(进化) 自适应控制 奇点 前馈 李雅普诺夫函数 人工神经网络 控制器(灌溉) 计算机科学 非线性系统 先验与后验 控制工程 工程类 数学 控制(管理) 人工智能 数学分析 农学 生物化学 化学 物理 哲学 认识论 量子力学 生物 基因
作者
Shi‐Lu Dai,Shude He,Min Wang,Chengzhi Yuan
出处
期刊:IEEE transactions on neural networks and learning systems [Institute of Electrical and Electronics Engineers]
卷期号:30 (12): 3686-3698 被引量:234
标识
DOI:10.1109/tnnls.2018.2876685
摘要

This paper presents adaptive neural tracking control of underactuated surface vessels with modeling uncertainties and time-varying external disturbances, where the tracking errors consisting of position and orientation errors are required to keep inside their predefined feasible regions in which the controller singularity problem does not happen. To provide the preselected specifications on the transient and steady-state performances of the tracking errors, the boundary functions of the predefined regions are taken as exponentially decaying functions of time. The unknown external disturbances are estimated by disturbance observers and then are compensated in the feedforward control loop to improve the robustness against the disturbances. Based on the dynamic surface control technique, backstepping procedure, logarithmic barrier functions, and control Lyapunov synthesis, singularity-free controllers are presented to guarantee the satisfaction of predefined performance requirements. In addition to the nominal case when the accurate model of a marine vessel is known a priori, the modeling uncertainties in the form of unknown nonlinear functions are also discussed. Adaptive neural control with the compensations of modeling uncertainties and external disturbances is developed to achieve the boundedness of the signals in the closed-loop system with guaranteed transient and steady-state tracking performances. Simulation results show the performance of the vessel control systems.

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