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A sliding-window least-squares estimation method for the biased velocity observation in the inertial-based integrated navigation systems

机译:基于惯性的组合导航系统中偏速度观测的滑窗最小二乘估计方法

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An effective estimation method is proposed for the constant horizontal velocity biases in the inertial-based integrated navigation systems. First, the analytical effects of the constant horizontal velocity biases on the exact inertial navigation errors are analyzed by the output-correction Kalman filter. Second, the sliding-window least-squares estimation method for the biased horizontal velocity observation is proposed where the INS error characteristic of horizontal velocities is sufficiently utilized. The simulation results illustrate that the estimation errors of constant horizontal velocity biases, which is derived within one Shuler oscillating period, are less than 5%. This estimation accuracy can be adequate in the inertial-based integrated navigation systems.
机译:针对基于惯性的组合导航系统中恒定的水平速度偏差,提出了一种有效的估计方法。首先,通过输出校正卡尔曼滤波器分析恒定水平速度偏差对精确惯性导航误差的分析效果。其次,提出了一种在水平速度有偏差的情况下充分利用水平轴惯性误差特征的滑动窗口最小二乘估计方法。仿真结果表明,在一个舒勒振荡周期内得出的恒定水平速度偏差的估计误差小于5%。在基于惯性的集成导航系统中,此估计精度可能足够。

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