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Chapter 67 An Adaptive Dynamic Kalman Filtering Algorithm Based on Cumulative Sums of Residuals

机译:第67章基于残差累积和的自适应动态卡尔曼滤波算法

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In order to overcome the drawbacks of the fault detection method based on x~2 test that is insensitive to soft fault detection, an adaptive dynamic robust Kalman based on variance inflation model was developed, which can detect the soft fault of system. The proposed method cumulates the residuals in open windows. When the cumulant surpasses the threshold, the error covariance is enlarged to prevent abnormal Global Positioning System (GPS) observations. This method has been applied to integrated navigation system of Inertial Navigation System/ Global Navigation Satellite System (INS/GNSS). The simulation results show that the soft fault is detected by using adaptive dynamic robust Kalman, and the filtering precision is higher than the traditional Kalman filtering algorithm.
机译:为了克服基于x〜2检验的故障检测方法对软故障检测不敏感的缺点,开发了一种基于方差膨胀模型的自适应动态鲁棒Kalman自适应检测方法,可以检测系统的软故障。所提出的方法在打开的窗口中累积残差。当累积量超过阈值时,误差协方差会增大,以防止异常的全球定位系统(GPS)观测。该方法已应用于惯性导航系统/全球导航卫星系统(INS / GNSS)的组合导航系统。仿真结果表明,采用自适应动态鲁棒Kalman算法对软故障进行了检测,其滤波精度高于传统的Kalman滤波算法。

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