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Auto Regressive Moving Average (ARMA) Modeling Method for Gyro Random Noise Using a Robust Kalman Filter

机译:使用鲁棒卡尔曼滤波器的陀螺随机噪声自动回归移动平均(ARMA)建模方法

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To solve the problem in which the conventional ARMA modeling methods for gyro random noise require a large number of samples and converge slowly, an ARMA modeling method using a robust Kalman filtering is developed. The ARMA model parameters are employed as state arguments. Unknown time-varying estimators of observation noise are used to achieve the estimated mean and variance of the observation noise. Using the robust Kalman filtering, the ARMA model parameters are estimated accurately. The developed ARMA modeling method has the advantages of a rapid convergence and high accuracy. Thus, the required sample size is reduced. It can be applied to modeling applications for gyro random noise in which a fast and accurate ARMA modeling method is required.
机译:为了解决传统的用于陀螺随机噪声的ARMA建模方法需要大量样本并且收敛缓慢的问题,开发了一种使用鲁棒卡尔曼滤波的ARMA建模方法。 ARMA模型参数用作状态参数。未知的观测噪声时变估计器用于获得观测噪声的估计均值和方差。使用鲁棒的卡尔曼滤波,可以准确估算ARMA模型参数。所开发的ARMA建模方法具有收敛速度快,精度高的优点。因此,减少了所需的样本量。它可用于需要快速而准确的ARMA建模方法的陀螺随机噪声的建模应用。

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