惯性传感器的含噪声建模

Kedong Wang, Shaofeng Xiong, Yong Li
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引用次数: 4

摘要

ARMA建模时,惯性传感器的色噪声必须确定AR参数、MA参数,以及估计ARMA模型阶数时测量白噪声的方差。由于MA项的存在,由有色噪声的自协方差构建的Yule-Walker方程从高于MA或AR模型阶数的阶数开始,阻碍了arma建模精度的进一步提高。本文将ARMA模型近似为高阶AR模型。由于近似的AR模型中不存在MA项,因此可以利用有色噪声自协方差的一阶构造Yule-Walker方程,这有利于提高白噪声方差的估计精度。该方法还可用于准确估计AR参数。仿真和实验验证了该方法的有效性。在ARMA建模中使用的彩色噪声的长度也被定量地确定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling with noises for inertial sensors
ARMA-modeling the inertial sensor's colored noise must determine the AR parameters, the MA parameters, as well as the variance of the measurement white noise when the order of the ARMA model is estimated. Due to the existence of the MA items, the Yule-Walker equation constructed by the colored noise's autocovariances starts from the order higher than the order of MA or AR model, which prevents from further improvement of the ARMA-modeling accuracy. In this paper, the ARMA model is approximated to a high-order AR model. Since there are no MA items in the approximated AR model, the Yule-Walker equation can be constructed from the 1st-order of the colored noise's autocovariances, which is beneficial to improving the estimation accuracy of the white noise variance. This method can also be used to estimate the AR parameters accurately. Simulations and experiment validate the effectiveness of the method. The length of the colored noise used in the ARMA modeling is also determined quantitatively.
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