Dynamic System Identification of Underwater Gliders based on Multi-output Gaussian Process

Li Guo, Boxv Min, Jian Gao, Anyan Jing, Jiarun Wang, Yimin Chen, Guang Pan
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Abstract

In this paper, a nonparametric system identification algorithm based on a multi-output Gaussian process for underwater gliders is proposed, which can predict the motion of UGs under the conditions of few training data, part measurable states, and high coupling degrees. The algorithm combines the nonlinear auto-regressive model with an external input structure and uses the conjugate gradient descent optimization algorithm to develop a nonparametric dynamic system identification scheme. The proposed scheme is implemented over data obtained from the simulated model of a UG ray-like manta of 5° and 10° Z-type steering data. The results show that the root means square errors of the prediction motion are less than 0.01500° compared with the real motion, and the multi-output Gaussian process can be accurately applied to the strong coupling, multi-degree-of-freedom (DOF) of the underwater gliders.
基于多输出高斯过程的水下滑翔机动态系统辨识
本文提出了一种基于多输出高斯过程的水下滑翔机非参数系统辨识算法,该算法能够在训练数据少、部分可测状态和高耦合度的情况下预测水下滑翔机的运动。该算法将非线性自回归模型与外部输入结构相结合,采用共轭梯度下降优化算法建立非参数动态系统辨识方案。该方案在5°和10°z型转向数据的UG类蝠鲼模拟模型数据上实现。结果表明,预测运动的均方根误差与实际运动相比小于0.01500°,多输出高斯过程可以准确地应用于水下滑翔机的强耦合、多自由度运动。
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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