论文标题
自主表面容器的环境干扰观察者框架
An environmental disturbance observer framework for autonomous surface vessels
论文作者
论文摘要
本文提出了考虑模型和测量不确定性的海事自动表面容器的强大干扰观察者框架。核心贡献在于非线性干扰观察者,重建了受环境影响的船只上的力。为此,发现映射导致同步全局指数稳定的误差动力学。借助Lyapunov的稳定性理论,即使干扰是高度动态的,误差也将误差成倍收敛于球。由于测量值受噪声的影响,并且物理模型可能是错误的,因此使用无味的卡尔曼过滤器(UKF)来生成更可靠的状态估计。另外,引入了噪声估计器,该噪声强度近似于噪声强度。根据测量噪声的严重程度,观察到的干扰通过由加权移动平均值(WMA)滤波器,UKF和拟议的干扰观察者组成的级联结构过滤。为了研究该观察者框架的能力,在不同模型和测量不确定性的情况下,动态地对环境干扰进行了模拟。可以看出,尽管使用较低的测量抽样率,错误的模型和嘈杂的测量值,但观察者框架仍可以在受环境影响的血管上近似动力学。
This paper proposes a robust disturbance observer framework for maritime autonomous surface vessels considering model and measurement uncertainties. The core contribution lies in a nonlinear disturbance observer, reconstructing the forces on a vessel impacted by the environment. For this purpose, mappings are found leading to synchronized global exponentially stable error dynamics. With the stability theory of Lyapunov, it is proven that the error converges exponentially into a ball, even if the disturbances are highly dynamic. Since measurements are affected by noise and physical models can be erroneous, an unscented Kalman filter (UKF) is used to generate more reliable state estimations. In addition, a noise estimator is introduced, which approximates the noise strength. Depending on the severity of the measurement noise, the observed disturbances are filtered through a cascaded structure consisting of a weighted moving average (WMA) filter, a UKF, and the proposed disturbance observer. To investigate the capability of this observer framework, the environmental disturbances are simulated dynamically under consideration of different model and measurement uncertainties. It can be seen that the observer framework can approximate dynamical forces on a vessel impacted by the environment despite using a low measurement sampling rate, an erroneous model, and noisy measurements.