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The Application of Kalman Filter on the Initial Alignment Algorithm of Strapdown Navigation System on Stationary Base

机译:卡尔曼滤波器在固定基地上截面导航系统初始对准算法上的应用

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Initial alignment is the process whereby the orientation of the axes of an inertial navigation system is determined with respect to the reference system. In this paper, the initial alignment error equations of the strapdown inertial navigation system (SINS) have been presented and discussed. The observability of SINS error models are discussed, and then a reduced order Kalman filter with five states and a full order Kalman filter with eight states are designed respectively to estimate the states of error models. It is shown that not all of these states are observable, and those states which are observable are different in rate of convergence. Results of the simulation show that the reduced order Kalman filter can guarantee higher accuracy and has less calculating burden compared with the full order Kalman filter.
机译:初始对准是关于参考系统确定惯性导航系统的轴的方向的过程。在本文中,已经介绍和讨论了表达惯性导航系统(SINS)的初始对准误差方程。讨论了SINS错误模型的可观察性,然后分别设计了具有五种状态的减少的卡尔曼滤波器和具有八个状态的完整阶Kalman滤波器以估计错误模型的状态。结果表明,并非所有这些状态都是可观察到的,并且可观察到的那些态度在收敛速率下不同。仿真结果表明,与全阶卡尔曼滤波器相比,减少的阶Kalman滤波器可以保证更高的准确性,并且具有较少的计算负担。

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