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An improved Sage Husa adaptive robust Kalman Filter for de-noising the MEMS IMU drift signal

机译:改进的Sage Husa自适应鲁棒卡尔曼滤波器,可对MEMS IMU漂移信号进行消噪

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A low cost MEMS based Inertial sensor measurement Unit (IMU) is a key device in Attitude Heading Reference System (AHRS). AHRS has been widely used to provide the position and orientation of an object. The performance of an AHRS system can degrade due to IMU sensor errors, that could be deterministic and stochastic. To improve the AHRS system performance, there is a need to develop; (i) stochastic error models and (ii) minimize the random drift using de-noising techniques. In this paper, the Sage-Husa Adaptive Robust Kalman Filter (SHARKF) is modified based on robust estimation and a time varying statistical noise estimator. In the proposed algorithm, an adaptive scale factor (a) is developed based on a three segment approach. In the MSHARKF, the adaptive factor is updated in each iteration step. The MSHARKF algorithm is applied to minimize the bias drift and random noise of the MEMS IMUs signals. From the Allan variance analysis, the noise coefficients such as bias instability (Bs), angle random walk (N) and drift are evaluated before and after minimizing. Simulation results reveal that the proposed algorithm performs better than other algorithms for similar tasks.
机译:基于低成本的基于MEMS的惯性传感器测量单元(IMU)是姿态标题参考系统(AHRS)的关键装置。 AHRS已被广泛用于提供对象的位置和方向。由于IMU传感器错误,AHRS系统的性能可能是确定性和随机的。为了提高AHRS系统性能,需要开发; (i)随机误差模型和(ii)使用去噪技术最小化随机漂移。在本文中,基于鲁棒估计和时变统计噪声估计器来修改Sage-Husa自适应稳健卡尔曼滤波器(SharkF)。在所提出的算法中,基于三个段方法开发自适应比例因子(A)。在MSHARKF中,在每次迭代步骤中更新自适应因子。应用MSHARKF算法以最小化MEMS IMUS信号的偏置漂移和随机噪声。从Allan方差分析中,在最小化之前和之后评估诸如偏置不稳定性(BS),角度随机步行(N)和漂移的噪声系数。仿真结果表明,该算法比其他任务的其他算法更好地执行。

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