基于协方差自适应卡尔曼滤波的GNSS/INS传感器融合

Chi-Yuan Cheng, Kuan-Chun Sun, Jwusheng Hu
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引用次数: 3

摘要

提出了一种估计松散耦合GNSS/INS传感器融合系统中卡尔曼滤波器测量噪声协方差矩阵的新方法。从卫星接收到的信号受环境条件的影响较大,会引起噪声方差的剧烈变化。因此,对测量噪声进行估计以提高融合质量是非常重要的。所提出的方法大多采用移动平均法从窗口区间的卡尔曼滤波创新序列在线估计测量噪声。然而,这些方法只能在准静态环境中有良好的性能,例如高速公路,那里的信号很少被阻塞。在城市等动态环境中,卫星信号经常受到建筑物的阻挡,导致噪声变化的范围很大。本文提出采用带度自适应的Savitzky-Golay滤波器(ADSG)估计测量噪声。ADSG滤波器采用局部多项式回归方法在窗口区间内拟合延迟样本创新序列,并通过统计量f检验调整多项式的阶次。实验表明,该方法的水平定位误差约为0.3m,优于现有的几种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GNSS/INS sensor fusion using Kalman filter with covariance adaptation
This paper proposes a new method which estimates the Kalman filter's measurement noise covariance matrix in a loosely coupled GNSS/INS sensor fusion system. The signals received from the satellites are heavily influenced by the environmental conditions, and will cause the noise variance to change dramatically. Thus, estimating the measurement noise to improve the fusion quality is very important. Most of the proposed methods use the moving average method to estimate the measurement noise online from the innovation sequence of the Kalman filter in the window interval. However, those methods can only have a good performance in a quasi-static environment, e.g., freeway where the signals are rarely blocked. In dynamic environments such as the urban area, the satellite signals are often blocked by the buildings, resulting in a large range of the noise variance. This paper proposes to use Savitzky-Golay filter with degree adaptation (ADSG) to estimate the measurement noise. The ADSG filter uses local polynomial regression method to fit the delayed-sample innovation sequence in the window interval, and adjust the polynomial order by the statistics F-test. Experiments show that the proposed method's horizontal position error is about 0.3m, which is better than several existing methods.
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