Online non-parametric modeling for ship maneuvering motion using local weighted projection regression and extended Kalman filter

Wancheng Yue, Junsheng Ren, Weiwei Bai
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引用次数: 0

Abstract

This paper proposed a method of online non-parameter identification of nonlinear ship motion systems. Firstly, we use Mariner to generate a certain amount of ship motion data to train the LWPR model. Then the ship travels along a set track. During this process, the sensors continuously obtain the distance, radial velocity and azimuth of the ship relative to the ship, and then completes the construction of simulation data. Next, the performance of the algorithm is verified which uses the Kalman filtering framework. Finally, the estimated value is further used for updating the LWPR model to achieve the purpose of online learning, and the updated model will be used for the next prediction. The experimental results show that the online modeling and tracking method proposed in this paper has higher tracking accuracy than the parameter estimation techniques.
基于局部加权投影回归和扩展卡尔曼滤波的船舶操纵运动在线非参数建模
提出了一种非线性船舶运动系统的在线非参数辨识方法。首先,我们使用Mariner生成一定数量的船舶运动数据来训练LWPR模型。然后船沿着固定的轨道行驶。在此过程中,传感器不断获取船舶相对于船舶的距离、径向速度和方位角,完成仿真数据的构建。其次,利用卡尔曼滤波框架验证了该算法的性能。最后,将估计值进一步用于更新LWPR模型,以达到在线学习的目的,更新后的模型将用于下一次预测。实验结果表明,本文提出的在线建模和跟踪方法比参数估计技术具有更高的跟踪精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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