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1-Point RANSAC UKF with Inverse Covariance Intersection for Fault Tolerance

机译:具有逆协方差的1点Ransac UKF用于容错

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摘要

The fault tolerance estimation method is proposed to maintain reliable correspondences between sensor data and estimation performance regardless of the number of valid measurements. The proposed method is based on the 1-point random sample consensus (RANSAC) unscented Kalman filter (UKF), and the inverse covariance intersection (ICI)-based data fusion method is added to the update process in the proposed algorithm. To verify the performance of the proposed algorithm, two analyses are performed with respect to the degree of measurement error reduction and accuracy of generated information. In addition, experiments are conducted using the dead reckoning (DR)/global positioning system (GPS) navigation system with a barometric altimeter to confirm the performance of fault tolerance in the altitude. It is confirmed that the proposed algorithm maintains estimation performance when there are not enough valid measurements.
机译:提出了容错估计方法,以在传感器数据与估计性能之间的可靠对应关系,而不管有效测量的数量如何。 所提出的方法基于1点随机样本共识(RANSAC)Unscented Kalman滤波器(UKF),并且在所提出的算法中将反向协方差(ICI)的数据融合方法添加到更新过程中。 为了验证所提出的算法的性能,对于测量误差减少程度和生成信息的准确性来执行两次分析。 此外,使用具有气压高度计的DEAC RECKONING(DR)/全球定位系统(GPS)导航系统进行实验,以确认高度容错的性能。 确认所提出的算法在没有足够的有效测量时保持估计性能。

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