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A Quadratic Interpolation-Based Variational Bayesian Algorithm for Measurement Information Lost in Underwater Navigation

机译:一种基于二次插值的变分贝叶斯水下导航测量信息丢失算法

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摘要

The main challenges of sequential estimations of underwater navigation applications are the internal/external measurement noise and the missing measurement situations. A quadratic interpolation-based variational Bayesian filter (QIVBF) is proposed to solve the underwater navigation problem of measurement information missing or insufficiency. The quadratic interpolation is used to improve the observed vector for the precision and stability of sequential estimations when the environment is changed or the measurement information is lost. The state vector, the predicted error covariance matrix, and the measurement noise matrix are derived based on the variational Bayesian method. Simulation results demonstrate the superiority of the proposed QIVBF compared with the traditional algorithm under the condition of measurement information lost by autonomous underwater vehicles.
机译:水下导航应用的顺序估计的主要挑战是内部/外部测量噪声和缺失测量情况。针对测量信息缺失或不足的水下导航问题,提出了一种基于二次插值的变分贝叶斯滤波器(QIVBF)。二次插值用于改善观测向量,以提高环境变化或测量信息丢失时顺序估计的精度和稳定性。基于变分贝叶斯方法推导了状态向量、预测误差协方差矩阵和测量噪声矩阵。仿真结果表明,在自主水下航行器测量信息丢失的情况下,所提QIVBF算法与传统算法相比具有优越性。

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