Autonomous underwater vehicle depth control based on an improved active disturbance rejection controller

控制理论(社会学) 自抗扰控制 超调(微波通信) 计算机科学 控制器(灌溉) 非线性系统 扰动(地质) 水下 运动控制 国家观察员 控制工程 控制(管理) 机器人 工程类 人工智能 电信 古生物学 海洋学 物理 量子力学 农学 生物 地质学
作者
Zhengzheng Zhang,Bingyou Liu,Lichao Wang
出处
期刊:International Journal of Advanced Robotic Systems [SAGE Publishing]
卷期号:16 (6) 被引量:6
标识
DOI:10.1177/1729881419891536
摘要

Large fluctuation, large overshoot, and uncertain external disturbance that occur when an autonomous underwater vehicle is in deep motion are difficult to address using the traditional control method. An optimal control strategy based on an improved active disturbance rejection control technology is proposed to enhance the trajectory tracking accuracy of autonomous underwater vehicles in actual bathymetric operations and resist external and internal disturbances. First, the depth motion and mathematical models of an autonomous underwater vehicle and propeller are established, respectively. Second, the control rate of the extended state observer and the nonlinear error feedback of the traditional active disturbance rejection control are improved by using a new nonlinear function. The nonlinearity, model uncertainty, and external disturbance of the autonomous underwater vehicle depth control system are extended to a new state, which is realized by an improved extended state observer. Third, the improved nonlinear state error feedback is used to suppress residual errors and provide high-quality control for the system. Simulation and experimental results show that under the same parameters, the traditional active disturbance rejection control has a small overshoot, fast tracking ability, and strong anti-interference ability. The optimized active disturbance rejection control and traditional active disturbance rejection control are applied to the deep-variation motion of autonomous underwater vehicles. Results show that the proposed optimal control strategy is not only simple and feasible but also demonstrates good control performance.

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