有限内存测量噪声自适应随机加权滤波算法

Dan Lv, Zhaohui Gao, Dejun Mu, Y. Zhong, Chengfan Gu
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引用次数: 0

摘要

提出了一种新的自适应随机加权滤波算法。该算法基于有限记忆测量噪声的在线估计,克服了现有有限记忆测量噪声在线估计卡尔曼滤波算法对测量噪声及其协方差矩阵进行算术平均估计导致滤波精度低的问题。该方法建立了随机加权理论,利用测量噪声统计量的权重,自适应地在线估计测量噪声及其协方差。利用测量噪声统计量的权重来抑制测量噪声对状态估计的影响,提高滤波估计的精度。通过仿真和分析,证明了基于在线估计有限记忆测量噪声算法的自适应随机加权滤波算法的优越性。
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Limited Memory Measurement Noise Adaptive Random Weighted Filtering Algorithm
A new adaptive random weighted filtering algorithm is proposed. It is based on online estimation of limited memory measurement noise to overcome the problem of low filtering precision caused by arithmetic average estimation of measurement noise and its covariance matrix in the existing Kalman filtering algorithm of limited memory online estimation of measurement noise. This method establishes the stochastic weighting theory to estimate the measurement noise online and its covariance by adaptive adj usting the weights of measurement noise statistics. The weight of measurement noise statistics is used to suppress the influence of measurement noise on state estimation and improve the accuracy of filter estimation. Through simulations and analysis, the superiority of the proposed adaptive random weighted filtering algorithm based on online estimation of limited memory measurement noise algorithm is proved.
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