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Noise Reduction of MEMS Gyroscope Based on Direct Modeling for an Angular Rate Signal

机译:基于角速率信号直接建模的MEMS陀螺仪降噪

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In this paper, a novel approach for processing the outputs signal of the microelectromechanical systems (MEMS) gyroscopes was presented to reduce the bias drift and noise. The principle for the noise reduction was presented, and an optimal Kalman filter (KF) was designed by a steady-state filter gain obtained from the analysis of KF observability. In particular, the true angular rate signal was directly modeled to obtain an optimal estimate and make a self-compensation for the gyroscope without needing other sensor’s information, whether in static or dynamic condition. A linear fit equation that describes the relationship between the KF bandwidth and modeling parameter of true angular rate was derived from the analysis of KF frequency response. The test results indicated that the MEMS gyroscope having an ARW noise of 4.87°/h0.5 and a bias instability of 44.41°/h were reduced to 0.4°/h0.5 and 4.13°/h by the KF under a given bandwidth (10 Hz), respectively. The 1σ estimated error was reduced from 1.9°/s to 0.14°/s and 1.7°/s to 0.5°/s in the constant rate test and swing rate test, respectively. It also showed that the filtered angular rate signal could well reflect the dynamic characteristic of the input rate signal in dynamic conditions. The presented algorithm is proved to be effective at improving the measurement precision of the MEMS gyroscope.
机译:在本文中,提出了一种新颖的方法来处理微机电系统(MEMS)陀螺仪的输出信号,以减少偏置漂移和噪声。提出了降噪的原理,并通过对KF可观察性的分析获得的稳态滤波器增益设计了最佳卡尔曼滤波器(KF)。特别是,直接对真实的角速率信号进行建模以获得最佳估计值,并在不需要静态或动态条件下的其他传感器信息的情况下对陀螺仪进行自补偿。通过对KF频率响应的分析得出了描述KF带宽和真实角速率的建模参数之间关系的线性拟合方程。测试结果表明,MEMS陀螺仪的ARW噪声为4.87°/ h 0.5 ,偏置不稳定性为44.41°/ h,减小到0.4°/ h 0.5 ,并且KF在给定带宽(10 Hz)下分别为4.13°/ h。在恒定速率测试和摆动速率测试中,1σ估计误差分别从1.9°/ s降低到0.14°/ s,从1.7°/ s降低到0.5°/ s。它还表明,滤波后的角速率信号可以很好地反映动态条件下输入速率信号的动态特性。实践证明,该算法对提高MEMS陀螺仪的测量精度是有效的。

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