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Variational Bayesian Adaptive Embedded Cubature Kalman Filter Algorithm for Initial Alignment of SINS with Uncertain Observations

机译:具有不确定观测值的SINS初始对准的变分贝叶斯自适应嵌入式Cubature卡尔曼滤波算法

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In the paper, a new variational bayesian based adaptive embedded cubature Kalman filter (VB-AECKF) for joint estimation of the dynamic state and measurement noise is proposed under a swing base. By constructing fully symmetric embedded integration rules for multidimensional integrals with a Gaussian weight function, a fifth-degree AECKF based filter with the estimated free parameter of ECKF based on maximum likelihood criterion is introduced in the initial alignment. The results of turntable experiment show that the proposed filter has better robustness to resist the uncertainties of measurement noise. What's more, the alignment accuracy and convergence rate of the VB- AECKF is much better than that of CKF.
机译:本文提出了一种基于变分贝叶斯的自适应嵌入式培养箱卡尔曼滤波器(VB-AECKF),用于联合估计动态状态和测量噪声。通过为具有高斯权函数的多维积分构建完全对称的嵌入式积分规则,在初始比对中引入了基于五阶AECKF的滤波器,该滤波器具有基于最大似然准则的ECKF估计自由参数。转台实验结果表明,该滤波器具有较好的鲁棒性,可以抵抗测量噪声的不确定性。而且,VB-AECKF的对准精度和收敛速度要比CKF好得多。

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