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The Geomagnetic Filtering Algorithm Based on Correlative Probability Density Add-Weight

机译:基于相关概率密度加重的地磁滤波算法

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To overcome the linearizated errors from the state equation and observation equation based on Extended Kalman Filter (EKF), a Unscented Kalman Filter (UKF) matching algorithm using geomagnetic anomaly based on probability weighted was proposed. For the problem that the quasi observations might be arose by choosing the same weight coefficient as the UT transformation, the geomagnetic anomaly UKF filtering algorithm associated with probability density function to assign weight for the sampled observation has been researched. The two experiments have been carried out in the South China Sea from the Earth Magnetic Anomaly Grid 2 (EMAG2), it is shown that the problem mentioned above could be overcome based on probability weighted, the drifting errors of inertial navigation system in longitude and latitude can be reduced by the modified algorithm, and the positioning accuracy and reliability of the modified algorithm is obviously superior to that of the traditional UKF algorithm and the Inertial Navigation System (INS).
机译:为了克服基于扩展卡尔曼滤波器(EKF)的状态方程和观察方程的线性化误差,提出了一种基于概率加权的Geomagnetic Anomaly的Unscented Kalman滤波器(UKF)匹配算法。对于通过选择与UT转换相同的重量系数来产生准观察的问题,已经研究了与概率密度函数相关联的概率密度函数的地磁异常UKF过滤算法已经研究过对采样观察的权重。这两个实验已经在中国南海从地球磁异常网格线2(EMAG2)进行的,它表明这个问题上面提到的可能基于概率加权来克服,惯性导航系统的经度和纬度漂移误差可通过经修饰的算法被减小,并且改进算法的定位精度和可靠性是明显优于传统的UKF算法和惯性导航系统(INS)的。

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