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A novel adaptive unscented Kalman filter

机译:一种新颖的自适应无味卡尔曼滤波器

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摘要

For solving the problem that the conventional unscented Kalman filter (UKF) declines in accuracy and further diverges when the system's noise statistics are unknown and time-varying, an adaptive UKF is proposed based on moving window and random weighting methods. The moving window estimation defined in linear system is generalized to the nonlinear filter — UKF. The noise statistics are calculated by applying the moving window estimation and then the weights on each window are adjusted by utilizing the random weighting method. The proposed algorithm has the ability to estimate and adjust the noise statistics online, making the best of the moving window and the random weighting methods. Simulation and comparison analysis demonstrate that the proposed adaptive UKF performs much better than the standard UKF under the condition that system's noise statistics are unknown and time-varying.
机译:为了解决传统的无味卡尔曼滤波器(UKF)在系统噪声统计未知且时变时精度降低,进一步发散的问题,提出了一种基于移动窗口和随机加权的自适应UKF滤波器。线性系统中定义的移动窗口估计被推广到非线性滤波器UKF。通过应用移动窗口估计来计算噪声统计量,然后利用随机加权方法调整每个窗口上的权重。该算法具有在线估计和调整噪声统计量的能力,可以充分利用移动窗口和随机加权方法。仿真和比较分析表明,在系统的噪声统计未知且时变的情况下,提出的自适应UKF的性能优于标准UKF。

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