基于联邦平方根CKF的北斗/SINS紧密耦合组合导航算法

Miao Yuanyuan, Zhang Lijie, Zhou Xuejing
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引用次数: 2

摘要

为了提高北斗/捷联惯导紧密耦合组合导航算法的容错性和运行速度,提出了一种基于联邦平方根cubature Kalman (SRCKF)的北斗/捷联惯导紧密耦合导航算法。采用误差协方差矩阵的平方根保证了SRCKF中矩阵的非负性,避免了CKF中滤波结果的发散性。联邦SRCKF滤波器用于融合加速度计、陀螺仪、磁传感器和北斗卫星导航接收机的姿态信息、伪距信息和伪距速率信息。联邦滤波器的容错性优于集中式滤波器。仿真结果表明,在保证导航精度的前提下,该算法的实时性优于集中式SRCKF算法。
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BeiDou/SINS tightly-coupled integrated navigation algorithm based on federated squared-root CKF
In order to improve the fault tolerance and the running speed of BeiDou/SINS tightly-coupled integrated navigation algorithm, a BeiDou/SINS tightly-coupled navigation algorithm base on federated squared-root cubature Kalman (SRCKF) is proposed in this paper. The square root of the error covariance matrix is used to ensure the non-negative nature of the matrix in SRCKF, which avoids the divergence of the filtering result in CKF. The federated SRCKF filter is designed to fuse the attitude information, pseudorange information and pseudorange rate information from accelerometer, gyroscope, magnetic sensor and BeiDou satellite navigation receiver. Fault tolerance of the federated filter is better than that of the centralized filter. The simulation results show that the real-time performance of the proposed algorithm is better than the centralized SRCKF under the premise of ensuring navigation accuracy.
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