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Bias Prediction for MEMS Gyroscopes

机译:MEMS陀螺仪的偏置预测

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摘要

MEMS gyroscopes are gaining popularity because of their low manufacturing costs in large quantities. For navigation system engineering, this presents a challenge because of strong nonstationary noise processes, such as 1/f noise, in the output of MEMS gyros. In practice, on-the-fly calibration is often required before the gyroscope data are useful and comparable to more expensive optical gyroscopes. In this paper, we focus on an important part of MEMS gyro processing, i.e., predicting the future bias given calibration data with known (usually zero) input. We derive prediction algorithms based on Kalman filtering and the computation of moving averages, and compare their performance against simple averaging of the calibration data based on both simulations and real measured data. The results show that it is necessary to model fractional noise in order to consistently predict the bias of a modern MEMS gyro, but the complexity of the Kalman filter approach makes other methods, such as the moving averages, appealing.
机译:MEMS陀螺仪因其低廉的批量生产成本而受到欢迎。对于导航系统工程而言,这是一个挑战,因为MEMS陀螺仪的输出中存在很强的非平稳噪声过程,例如1 / f噪声。实际上,在陀螺仪数据有用且可与更昂贵的光学陀螺仪进行比较之前,通常需要进行实时校准。在本文中,我们专注于MEMS陀螺仪处理的重要部分,即在已知(通常为零)输入的校准数据下预测未来偏差。我们推导基于卡尔曼滤波和移动平均值计算的预测算法,并基于模拟和实际测量数据将其性能与校准数据的简单平均进行比较。结果表明,为了始终如一地预测现代MEMS陀螺仪的偏置,必须对分数噪声进行建模,但是卡尔曼滤波器方法的复杂性使其他方法(例如移动平均值)具有吸引力。

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