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A Novel Scheme for DVL-Aided SINS In-Motion Alignment Using UKF Techniques

机译:使用UKF技术的DVL辅助SINS运动对准的新方案

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In-motion alignment of Strapdown Inertial Navigation Systems (SINS) without any geodetic-frame observations is one of the toughest challenges for Autonomous Underwater Vehicles (AUV). This paper presents a novel scheme for Doppler Velocity Log (DVL) aided SINS alignment using Unscented Kalman Filter (UKF) which allows large initial misalignments. With the proposed mechanism, a nonlinear SINS error model is presented and the measurement model is derived under the assumption that large misalignments may exist. Since a priori knowledge of the measurement noise covariance is of great importance to robustness of the UKF, the covariance-matching methods widely used in the Adaptive KF (AKF) are extended for use in Adaptive UKF (AUKF). Experimental results show that the proposed DVL-aided alignment model is effective with any initial heading errors. The performances of the adaptive filtering methods are evaluated with regards to their parameter estimation stability. Furthermore, it is clearly shown that the measurement noise covariance can be estimated reliably by the adaptive UKF methods and hence improve the performance of the alignment.
机译:捷联惯性导航系统(SINS)在运动中的对准而没有任何大地测量框架观​​测是自动水下航行器(AUV)面临的最严峻挑战之一。本文提出了使用无味卡尔曼滤波器(UKF)的多普勒速度测井(DVL)辅助SINS对准的新方案,该方案允许较大的初始偏差。利用所提出的机制,提出了一个非线性的SINS误差模型,并在可能存在大的未对准的情况下推导了测量模型。由于测量噪声协方差的先验知识对于UKF的鲁棒性非常重要,因此在自适应KF(AKF)中广泛使用的协方差匹配方法已扩展为在自适应UKF(AUKF)中使用。实验结果表明,所提出的DVL辅助对准模型在任何初始航向误差下都是有效的。就其参数估计的稳定性评估了自适应滤波方法的性能。此外,清楚地表明,可以通过自适应UKF方法可靠地估计测量噪声的协方差,从而提高对准的性能。

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