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Dynamic Performance Comparison of Two Kalman Filters for Rate Signal Direct Modeling and Differencing Modeling for Combining a MEMS Gyroscope Array to Improve Accuracy

机译:两个卡尔曼滤波器的动态性能比较,用于速率信号直接建模和差分建模,以结合MEMS陀螺仪阵列以提高精度

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In this paper, the performance of two Kalman filter (KF) schemes based on the direct estimated model and differencing estimated model for input rate signal was thoroughly analyzed and compared for combining measurements of a sensor array to improve the accuracy of microelectromechanical system (MEMS) gyroscopes. The principles for noise reduction were presented and KF algorithms were designed to obtain the optimal rate signal estimates. The input rate signal in the direct estimated KF model was modeled with a random walk process and treated as the estimated system state. In the differencing estimated KF model, a differencing operation was established between outputs of the gyroscope array, and then the optimal estimation of input rate signal was achieved by compensating for the estimations of bias drifts for the component gyroscopes. Finally, dynamic simulations and experiments with a six-gyroscope array were implemented to compare the dynamic performance of the two KF models. The 1σ error of the gyroscopes was reduced from 1.4558°/s to 0.1203°/s by the direct estimated KF model in a constant rate test and to 0.5974°/s by the differencing estimated KF model. The estimated rate signal filtered by both models could reflect the amplitude variation of the input signal in the swing rate test and displayed a reduction factor of about three for the 1σ noise. Results illustrate that the performance of the direct estimated KF model is much higher than that of the differencing estimated KF model, with a constant input signal or lower dynamic variation. A similarity in the two KFs’ performance is observed if the input signal has a high dynamic variation.
机译:本文针对输入速率信号的直接估计模型和差分估计模型,对两种卡尔曼滤波器(KF)方案的性能进行了彻底的分析和比较,以结合传感器阵列的测量结果以提高微机电系统(MEMS)的精度陀螺仪。提出了降低噪声的原理,并设计了KF算法来获得最佳速率信号估计。直接估计KF模型中的输入速率信号是通过随机游走过程建模的,并被视为估计的系统状态。在差分估计KF模型中,在陀螺仪阵列的输出之间建立了差分运算,然后通过补偿分量陀螺仪的偏置漂移的估计来实现输入速率信号的最佳估计。最后,利用六陀螺仪阵列进行了动态仿真和实验,以比较两个KF模型的动态性能。在恒定速率测试中,直接估计的KF模型将陀螺仪的1σ误差从1.4558°/ s降低至0.1203°/ s,并通过差分估计的KF模型将其降低至0.5974°/ s。通过两个模型滤波的估计速率信号可以反映摆率测试中输入信号的幅度变化,并针对1σ噪声显示约3的降低因子。结果表明,在输入信号恒定或动态变化较小的情况下,直接估计KF模型的性能比差分估计KF模型的性能高得多。如果输入信号具有很大的动态变化,则可以观察到两个KF的性能相似。

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