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An Adaptive Unscented Kalman Filtering Algorithm for MEMS/GPS Integrated Navigation Systems

机译:用于MEMS / GPS集成导航系统的自适应Uncented Kalman滤波算法

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MEMS/GPS integrated navigation system has been widely used for land-vehicle navigation. This system exhibits large errors because of its nonlinear model and uncertain noise statistic characteristics. Based on the principles of the adaptive Kalman filtering (AKF) and unscented Kalman filtering (AUKF) algorithms, an adaptive unscented Kalman filtering (AUKF) algorithm is proposed. By using noise statistic estimator, the uncertain noise characteristics could be online estimated to adaptively compensate the time-varying noise characteristics. Employing the adaptive filtering principle into UKF, the nonlinearity of system can be restrained. Simulations are conducted for MEMS/GPS integrated navigation system. The results show that the performance of estimation is improved by the AUKF approach compared with both conventional AKF and UKF.
机译:MEMS / GPS集成导航系统已广泛用于陆车辆导航。由于其非线性模型和不确定的噪声统计特征,该系统表现出大的误差。基于Adaptive Kalman滤波(AKF)和Unscented Kalman滤波(AukF)算法的原理,提出了一种自适应uncented的卡尔曼滤波(AukF)算法。通过使用噪声统计估计器,可以在线估计不确定的噪声特性以自适应地补偿时变噪声特性。采用自适应滤波原理进入UKF,可以抑制系统的非线性。对MEMS / GPS集成导航系统进行了模拟。结果表明,与常规AKF和UKF相比,AukF方法通过AukF方法改善了估计的性能。

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