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Rapid Transfer Alignment of MEMS SINS Based on Adaptive Incremental Kalman Filter

机译:基于自适应增量卡尔曼滤波器的MEMS SINS快速传递对准

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In airborne MEMS SINS transfer alignment, the error of MEMS IMU is highly environment-dependent and the parameters of the system model are also uncertain, which may lead to large error and bad convergence of the Kalman filter. In order to solve this problem, an improved adaptive incremental Kalman filter (AIKF) algorithm is proposed. First, the model of SINS transfer alignment is defined based on the “Velocity and Attitude” matching method. Then the detailed algorithm progress of AIKF and its recurrence formulas are presented. The performance and calculation amount of AKF and AIKF are also compared. Finally, a simulation test is designed to verify the accuracy and the rapidity of the AIKF algorithm by comparing it with KF and AKF. The results show that the AIKF algorithm has better estimation accuracy and shorter convergence time, especially for the bias of the gyroscope and the accelerometer, which can meet the accuracy and rapidity requirement of transfer alignment.
机译:在机载MEMS SINS传递对准中,MEMS IMU的误差高度依赖于环境,并且系统模型的参数也不确定,这可能导致较大的误差和卡尔曼滤波器的收敛性差。为了解决这个问题,提出了一种改进的自适应增量卡尔曼滤波器(AIKF)算法。首先,基于“速度和姿态”匹配方法定义了捷联惯导传递对准模型。然后给出了AIKF的详细算法进展及其递推公式。还比较了AKF和AIKF的性能和计算量。最后,设计了一个仿真测试,以通过与KF和AKF进行比较来验证AIKF算法的准确性和快速性。结果表明,AIKF算法具有较高的估计精度和较短的收敛时间,特别是对于陀螺仪和加速度计的偏置,可以满足传递对准的精度和快速性要求。

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