28 / 2021-06-22 15:32:56
An improved initial alignment method using Kalman filtering of the vectorized K-matrix
终稿
Haoqian Huang / Hohai University
Jiaying Wei / Hohai University
Chao Jin / Hohai University
Jiacheng Tang / Hohai University
In this paper, a Kalman filter based on the truncated vectorized K-matrix is proposed to improve the initial alignment process of SINS.  This filter makes up for the shortcoming that the Optimal-REQUEST algorithm estimates the scalar gain and performance index conservatively when calculating the K-matrix. The state space equation of the K-matrix is expressed as a matrix equation uniquely. Further, the state vector truncated by the K-matrix is used to establish the truncated state-space model. Meanwhile, the linear Kalman filter is employed to update the K-matrix. Then, the optimal quaternion can be acquired from the updated K-matrix to complete the initial alignment. Especially, the case of Gaussian white noise is considered so that it can reduce the impact of inertial device measurement error effectively during the initial alignment process. The simulation results imply that the proposed approach raises the accuracy and speed of initial alignment greatly in comparison with the traditional algorithm.
重要日期
  • 会议日期

    10月21日

    2021

    10月23日

    2021

  • 10月26日 2021

    注册截止日期

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